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Unmanned aerial vehicle surveys reveal unexpectedly high density of a threatened deer in a plantation forestry landscape

Published online by Cambridge University Press:  08 June 2022

Javier A. Pereira
Affiliation:
Museo Argentino de Ciencias Naturales “Bernardino Rivadavia”—Consejo Nacional de Investigaciones Científicas y Técnicas, Buenos Aires, Argentina
Diego Varela
Affiliation:
Instituto de Biología Subtropical, Universidad Nacional de Misiones—Consejo Nacional de Investigaciones Científicas y Técnicas, Asociación Civil Centro de Investigaciones del Bosque Atlántico, Misiones, Argentina
Leonardo J. Scarpa*
Affiliation:
Centro de Investigación Científica y de Transferencia Tecnológica a la Producción—Consejo Nacional de Investigaciones Científicas y Técnicas, Facultad de Ciencia y Tecnología, Universidad Autónoma de Entre Ríos, Diamante, Entre Ríos, Argentina
Antonio E. Frutos
Affiliation:
Centro de Investigación Científica y de Transferencia Tecnológica a la Producción—Consejo Nacional de Investigaciones Científicas y Técnicas, Facultad de Ciencia y Tecnología, Universidad Autónoma de Entre Ríos, Diamante, Entre Ríos, Argentina
Natalia G. Fracassi
Affiliation:
Estación Experimental Agropecuaria Delta del Paraná, Instituto Nacional de Tecnología Agropecuaria, Buenos Aires, Argentina
Bernardo V. Lartigau
Affiliation:
Asociación para la Conservación y el Estudio de la Naturaleza, Buenos Aires, Argentina
Carlos I. Piña
Affiliation:
Centro de Investigación Científica y de Transferencia Tecnológica a la Producción—Consejo Nacional de Investigaciones Científicas y Técnicas, Facultad de Ciencia y Tecnología, Universidad Autónoma de Entre Ríos, Diamante, Entre Ríos, Argentina
*
(Corresponding author, [email protected])

Abstract

The Vulnerable marsh deer Blastocerus dichotomus, the largest native cervid in South America, is declining throughout its range as a result of the conversion of wetlands and overhunting. Estimated densities in open wetlands of several types are 0.1–6.8 individuals per km2. We undertook the first unmanned aerial vehicle (UAV) survey of the marsh deer to estimate the density of this species in a 113.6 km2 area under forestry management in the lower delta of the Paraná River, Argentina. During 6–8 August 2019, at a time of year when canopy cover is minimal, we surveyed marsh deer using Phantom 4 Pro UAVs along 94 transects totalling 127.8 km and 8.6 km2 (8.1% of the study area). The 5,506 photographs obtained were manually checked by us and by a group of 39 trained volunteers, following a standardized protocol. We detected a total of 58 marsh deer, giving an estimated density of 6.90 individuals per km2 (95% CI 5.26–8.54), which extrapolates to 559–908 individuals in our 113.6 km2 study area. As it has generally been assumed that marsh deer prefer open habitats, this relatively high estimate of density within a forestry plantation matrix is unexpected. We discuss the advantages of using UAVs to survey marsh deer and other related ungulates.

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Article
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This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
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Copyright © The Author(s), 2022. Published by Cambridge University Press on behalf of Fauna & Flora International

Introduction

The marsh deer Blastocerus dichotomus, the largest native cervid in South America, occurs from central Brazil to central Argentina (Pinder & Grosse, Reference Pinder and Grosse1991). The species is declining throughout its range, mainly as a result of the conversion of wetlands and overhunting, and is categorized as Vulnerable on the IUCN Red List (Duarte et al., Reference Duarte, Varela, Piovezan, Beccaceci and García2016). The primary habitat of this species is wetlands of several types and with different hydrological regimes (e.g. flooded grasslands, vegetated lagoons, swamps with floating marshes), with transitional areas between open water and terrestrial uplands used at finer scales (Tomas & Salis, Reference Tomas and Salis2000; Piovezan et al., Reference Piovezan, Tiepolo, Tomas, Duarte, Varela, Marinho-Filho, Duarte and González2010). Although the marsh deer is mostly associated with open habitats, the occasional use of forested areas by this ungulate has been reported (Pinder, Reference Pinder1996; Piovezan, Reference Piovezan2004).

Marsh deer densities have been estimated in various types of open habitats, including the Pantanal of Brazil and the Iberá marshes of Argentina (Beccaceci, Reference Beccaceci1994; Mauro et al., Reference Mauro, Mourão, Pereira Da Silva, Coutinho, Tomas and Magnusson1995; Mourão et al., Reference Mourão, Coutinho, Mauro, Campos, Tomás and Magnusson2000; Tomas et al., Reference Tomas, Salis, Silva and Mourão2001; Ávila, Reference Ávila2017), open, wet savannahs in Bolivia (Ayala-Crespo, Reference Ayala-Crespo2010; Ríos-Uzeda & Mourão, Reference Ríos-Uzeda and Mourão2012), the floodplains of the Paraná River (Mourão & Campos, Reference Mourão and Campos1995; Pinder, Reference Pinder1996; Andriolo et al., Reference Andriolo, Piovezan, Costa, Laake and Duarte2005, Reference Andriolo, Piovezan, Costa, Torres, Vogliotti, Zerbini and Duarte2013; Tiepolo et al., Reference Tiepolo, Tomas and Lima-Borges2010; Pereira, Reference Pereira2016) and other small wetlands (Peres et al., Reference Peres, Polverini, Oliveira and Duarte2017). Estimated densities are 0.1–6.8 individuals per km2 (Table 1). Although these densities were estimated for areas with various levels of anthropogenic disturbance (e.g. from almost pristine savannahs in Bolivia to wetlands artificially flooded during dam construction along the Paraná River), the highest marsh deer densities have generally been observed in landscape gradients, including transitional areas between open water and terrestrial uplands (Piovezan et al., Reference Piovezan, Tiepolo, Tomas, Duarte, Varela, Marinho-Filho, Duarte and González2010).

Table 1 Reported densities of the marsh deer Blastocerus dichotomus, by location, with habitat type, survey method and source.

Aerial surveys are particularly useful for surveying large mammals, especially over large, open areas, because of the potential for high detection rates (Sinclair, Reference Sinclair1972; Caughley & Grigg, Reference Caughley and Grigg1981; Jachmann, Reference Jachmann2001) and because the resulting estimates are more reliable than those from ground-based techniques (Guo et al., Reference Guo, Shao, Li, Wang, Wang and Liu2018). Aerial surveys using manned airplanes or helicopters have been the most common method employed for counting marsh deer (Table 1). However, aerial surveys using manned aircraft can be logistically difficult to implement, costly and pose a risk for operators, and are also potentially susceptible to biases related to the physiological and psychological limitations of human perception and potential reactions of the target species to the survey vehicle (Caughley, Reference Caughley1974; Bartmann et al., Reference Bartmann, Carpenter, Garrott and Bowden1986; Beasom et al., Reference Beasom, Leon and Synatzske1986; Samuel et al., Reference Samuel, Garton, Schlegel and Carson1987; Fleming & Tracey, Reference Fleming and Tracey2008). Unmanned aerial vehicles (UAVs or drones) present a new opportunity for surveying wildlife as the logistics of deploying them are less complex and the cost is lower than for manned aircraft, they can fly safely at low altitudes and they are particularly useful for surveying sensitive species (Chabot & Bird, Reference Chabot and Bird2015; Hodgson et al., Reference Hodgson, Mott, Baylis, Pham, Wotherspoon and Kilpatrick2018; Wang et al., Reference Wang, Shao and Yue2019). However, there are also drawbacks of using UAVs, including reduced flight time, short operating distances, weather restrictions (most UAVs cannot fly in rain or moderately high winds), the potential for behavioural responses of animals to the UAVs, and the social concerns of using UAVs, including privacy, psychological responses and safety (Sandbrook, Reference Sandbrook2015; Hodgson & Koh, Reference Hodgson and Koh2016; Wang et al., Reference Wang, Shao and Yue2019). The use of UAVs for surveying a range of organisms (e.g. rare primates, de Melo, Reference de Melo2021; dolphins, Oliveira-da-Costa et al., Reference Oliveira-da-Costa, Marmontel, da-Rosa, Coelho, Wich, Mosquera-Guerra and Trujillo2020; caimans, Scarpa & Piña, Reference Scarpa and Piña2019), and for other conservation uses (e.g. as a tool to mitigate negative interactions between people and wildlife; Hahn et al., Reference Hahn, Mwakatobe, Konuche, de Souza, Keyyu and Goss2017), continues to develop. Unmanned aerial vehicles have been employed to survey several large herbivores, including the elephant Loxodonta africana (Vermeulen et al., Reference Vermeulen, Lejeune, Lisein, Sawadogo and Bouche2013), common hippopotamus Hippopotamus amphibius (Linchant et al., Reference Linchant, Lhoest, Quevauvillers, Lejeune, Vermeulen and Semeki Ngabinzeke2018), white-tailed deer Odocoileus virginianus (Preston et al., Reference Preston, Wildhaber, Green, Albers and Debenedetto2021), Tibetan antelope Pantholops hodgsonii (Hu et al., Reference Hu, Wu and Dai2020), Tibetan gazelle Procapra picticaudata, kiang Equus kiang, and blue sheep Pseudois nayaur (Guo et al., Reference Guo, Shao, Li, Wang, Wang and Liu2018), but to our knowledge they have not been used to survey the marsh deer.

The southernmost population of the marsh deer inhabits the lower delta of the Paraná River, Argentina (Varela, Reference Varela2003; D'Alessio et al., Reference D'Alessio, Lartigau, Aprile, Herrera, Varela, Gagliardi, Mónaco, Peteán and Cappato2006). This population, c. 500 km from the nearest population of the species (Pereira et al., Reference Pereira, Varela, Aprile, Cirignoli, Orozco and Lartigau2019), is genetically distinct from other marsh deer populations (Márquez et al., Reference Márquez, Maldonado, González, Beccaceci, García and Duarte2006), suggesting it should be considered a separate management unit. This delta has been subjected to large-scale transformation since the mid 19th century (Galafassi, Reference Galafassi2005; Baigún et al., Reference Baigún, Puig, Minotti, Kandus, Quintana and Vicari2008; Sica et al., Reference Sica, Quintana, Radeloff and Gavier-Pizarro2016). The gallery forest that originally occupied the levees of islands has been almost entirely replaced by commercial plantations of poplar Populus sp. and willow Salix sp., and freshwater marshes have been drained to accommodate plantations and cattle pasture. Habitat conversion has been facilitated by embankments to protect tree plantations and cattle from recurrent floods, turning embanked areas into flood-free lands (Galafassi, Reference Galafassi2005; Baigún et al., Reference Baigún, Puig, Minotti, Kandus, Quintana and Vicari2008; Quintana et al., Reference Quintana, Bó, Astrada and Reeves2014; Minotti, Reference Minotti2019).

These extensive habitat disturbances, together with poaching and predation by dogs, led to categorization of the marsh deer population of the Paraná Delta as Endangered (Pereira et al., Reference Pereira, Varela, Aprile, Cirignoli, Orozco and Lartigau2019). However, most of this population (distributed across c. 2,700 km2) is associated with landscapes under forestry production (Varela, Reference Varela2003; Fracassi & Somma, Reference Fracassi and Somma2010; Iezzi et al., Reference Iezzi, Fracassi and Pereira2018), and there is a need for an assessment of the interactions between the marsh deer and regional forestry practices. There has been no rigorous estimate of marsh deer density in this region, but an informed guess (Lartigau et al., Reference Lartigau, De Angelo, D'Alessio, Jiménez Pérez, Aprile, Aued, Fracassi, Ojeda, Chillo and Díaz Isenrath2012) suggested a population of c. 500 individuals over an area of 950 km2 (c. 0.53 individuals/km2). The absence of a survey of marsh deer in this area precludes any attempt to assess the impact of human activities on this population or to evaluate the effectiveness of any management interventions to improve its status. Here we describe a UAV-based survey employed to estimate density of the marsh deer in an area under forestry management in the lower delta of the Paraná River. We contextualize our results with those of previous surveys of the species elsewhere, and discuss procedures to minimize sampling errors and biases.

Study area

This study was conducted in El Oasis property of the forestry company Arauco Argentina S.A. in the province of Buenos Aires, Argentina (Fig. 1), c. 19 km north of the city of Campana. This property is mostly surrounded by lands dedicated to forestry, silvopastoral systems and extensive cattle production. The landscape of El Oasis is mostly flat, with c. 87% of its 113.6 km2 occupied by willow (69% of the land area in production), eucalyptus Eucalyptus sp. (17%), poplar (13%), pines Pinus sp. and ash Fraxinus sp. plantations of varying age, density and management practices (D. Artero, pers. comm., 2020). Some patches of native vegetation (freshwater marshes dominated by macrophytes such as Scirpus giganteus and the tree Erythrina crista-galli, and gallery forests of Myrceugenia glaucescens and Blepharocalix salicifolia), totalling 7.5 km2, are maintained as a protected area. An extensive network of unmade roads provides access, and the property is almost completely enclosed by a perimeter embankment as a defence against floods. El Oasis was first certified under the Forest Stewardship Council (FSC) standard in 2014, and in 2019 was awarded an FSC ecosystems services certificate for demonstrating its positive impact in the conservation of the marsh deer.

Fig. 1 (a) The locations of transects surveyed, using UAVs, for the marsh deer Blastocerus dichotomus within the plantation forestry landscape of El Oasis property, in the lower delta of the Paraná River, Argentina, during 6–8 August 2019, and the marsh deer records obtained. (b) A heatmap of these records, with a scale from high (black) to low (white) concentration of records.

Methods

We surveyed marsh deer using two Phantom 4 Pro UAVs (SZ DJI Technology Co., Shenzhen, China), each equipped with a high-definition camera (1″ CMOS, 20 MP sensor; field of view 84°, 8.8/24 mm, f/2.8–f/11 auto focus at 1 m–∞) mounted on its 3-axis gimbal, transmitting a live-feed to the tablet-mounted remote control. A flight plan (i.e. a sequence of locations to be visited by the UAV, and flight parameters such as altitude and speed) was uploaded to each device. Once the UAV was launched, it flew the pre-programmed path from the flight starting point, with an operator on the ground observing remotely.

An initial exploratory survey was conducted during 16–17 May 2019, during which six flight plans were flown (totalling 19.5 km). These flights were designed to test different flight parameters (i.e. speed, altitude) and image-collection schedules to maximize the probability of distinguishing a marsh deer from its surroundings in the various habitat types within the study area. After these initial flights, the following parameters were used for the surveys: altitude of 45 m above ground level (resulting in a 67.5 m wide transect), ground speed of 6.5 m/s, and a photograph taken every 5 s (resulting in a frontal overlap of c. 33% between consecutive photographs). Marsh deer did not noticeably react (i.e. escape behaviour was never observed) to the advance of a UAV at this combination of flight altitude and speed.

Survey flights were performed during 6–8 August 2019, in the austral winter, when leaf cover is lowest (poplar and willow are deciduous; Plate 1). A grid with cells of 1,500 m (north–south) × 100 m (east–west) was superimposed on an image of the study area, and transects of 1,500 m were defined by the intersection of north–south with east–west lines. As the perimeter of the study area is irregular and the length of the resulting transects at the property edges varied considerably, only transects > 760 m long were used. Transects were numbered and randomly selected to be included in the survey until 10% coverage of the study area was achieved. These transects (Fig. 1a) were transformed into flight paths in DJI GS Pro (Dà-Jiāng Innovations, Shenzhen, China). Each flight path was designed to encompass the greatest possible number of chosen transects, considering flight range constrains imposed by battery capacity. Once these flight paths were defined, additional transects were included; where the end and start positions of transects were greater than 1,500 m apart, we delineated additional east–west transects to be surveyed. The first and last 100 m of these transects were truncated (i.e. the photographs discarded) to avoid possible double counting of individuals. Flight paths < 500 m apart were flown consecutively within a short period of time (i.e. < 3 h), to minimize double counting as deer could have moved between adjacent transects (marsh deer did not react to the advance of the UAV and the species usually moves slowly). A one-way ANOVA was used to tests if transect length affected the probability of recording a marsh deer, grouping transect lengths into four categories (760–1,040 m, 1,041–1,350 m, 1,351–1,640 m, > 1,640 m), with deer density on the transects (as individuals/ha) as the response variable.

Plate 1 Examples of records of the marsh deer Blastocerus dichotomus in different habitat types from photographs taken during UAV flights at an altitude of 45 m above ground level within the El Oasis property in the lower delta of the Paraná River, Argentina (Fig. 1), during 6–8 August 2019.

The 5,506 photographs obtained from the surveys were manually checked by the authors and by 39 trained volunteers (training involved practice identifying deer and other species from photographs obtained during the exploratory survey). Each observer analysed a subset of images, following a standardized protocol: zooming in digitally on the image and looking from left to right and from top to bottom for marsh deer. Overlapping sequential images were compared to avoid double counting. Each photograph was checked by at least two independent observers. The total number of marsh deer recorded by all observers, excluding multiple detections of the same individual by more than one observer, was used to estimate marsh deer density.

We evaluated whether the ability of observers to detect deer was affected by them occurring in the centre of a photograph compared to those occurring towards the borders of a photograph. For every photograph in which a marsh deer was detected, a grid of nine equal quadrants was superimposed digitally, allowing assignation of detection to only one of nine possible positions within the image (none of the photographs used to evaluate observers' ability to detect deer contained more than one deer). Thirty groups of 30 photographs each were assembled (i.e. 900 in total), with each group comprising 21 photographs without marsh deer and nine with a single deer in each of the nine positions (photographs did not include the grid). Photographs assigned to each group were randomly selected from a subset of photographs featuring the same situation (i.e. with a deer in the top-right position, with a deer in the centre-left position, without a deer, etc.). Thirty volunteers (of the 39 who analysed the photographs) were each given a group of photographs for evaluation, but were not informed that the images had already been analysed. The probability of detecting a marsh deer in each of the nine positions within the photographs was estimated as the number of times observers detected a deer in each position divided by the total number of photographs (30) featuring the animal in this position. A χ 2 test was used to examine whether a deer had the same chance of being observed irrespective of its location in the photographs.

Marsh deer records obtained during flights were digitized using Google Earth (Google, Mountain View, USA) and converted to a GIS shapefile. A heatmap was used to visualize spatial patterns of marsh deer records, using QGIS 3.12.2 (QGIS Development Team, 2020), to evaluate whether records were evenly distributed within the study area or circumscribed to a particular sector, which would preclude extrapolation of any density estimate to the whole study area.

Results

We surveyed 94 transects from 29 flight plans. Mean transect length was 1,359 m, totalling 127.8 km and 8.6 km2 surveyed (8.1% of the 113.6 km2 study area). Length of transect did not affect the probability of detecting a marsh deer (ANOVA F3,90 = 0.24, P = 0.8). Marsh deer were observed on 39 transects (41.5%), and the maximum number of individuals sighted on a single transect was three.

Fifty-eight marsh deer were detected and there were no significant differences in the probability of detecting a deer in each of the nine quadrants of a photograph (χ 2 = 0.74, df = 4, P = 0.947). The heatmap showed that, although some records were clustered, marsh deer were widely distributed throughout the area surveyed (Fig. 1b). The estimated density of marsh deer was 6.90 individuals/km2 (95% CI 5.26–8.54 individuals/km2), giving an estimated total abundance of 559–908 individuals in the 113.6 km2 study area.

Discussion

Our estimate of the density of marsh deer is one of the highest recorded for the species (Table 1). Even in relatively well-conserved areas such as the savannahs of the Madidi National Park in Bolivia and the Pantanal wetlands of Brazil, estimated marsh deer densities were considerably lower than our estimate (except for one site in the Iberá wetlands, Argentina; Table 1). However, most of these previous density estimates were obtained over large landscapes, using fixed-wing aircraft with line transects and distance sampling, and thus direct comparisons may be inappropriate.

As open habitats are generally considered to be preferred by marsh deer (Pinder & Grosse, Reference Pinder and Grosse1991; Piovezan et al., Reference Piovezan, Tiepolo, Tomas, Duarte, Varela, Marinho-Filho, Duarte and González2010), our high density estimate within a forestry plantation is unexpected. At least two factors could have contributed to this finding: the modified landscape, and low hunting or predation pressure.

The development of commercial tree plantations and cattle pastures has been facilitated by water control structures, including embankments of 2–6 m above typical water levels, transforming embanked enclosures into flood-free land (Galafassi, Reference Galafassi2005; Blanco & Méndez, Reference Blanco and Méndez2010). As embankment enclosures are interspersed throughout the lower delta landscape (Minotti, Reference Minotti2019), they have increased the transitional areas between open water and terrestrial uplands preferred by the marsh deer (Piovezan et al., Reference Piovezan, Tiepolo, Tomas, Duarte, Varela, Marinho-Filho, Duarte and González2010). El Oasis is completely embanked and because of its relatively large size (> 100 km2) it contains a heterogeneous landscape. Although forest plantations dominate, these comprise various tree species (but mostly willow, which has been shown to provide better habitat for wildlife than poplar, eucalyptus or pines in this wetland; Varela, Reference Varela2003; Fracassi & Somma, Reference Fracassi and Somma2010) of heterogeneous ages and differing management stages. Plantations, numerous streams, artificial channels and small marshlands are embedded within this landscape, and this has resulted in areas of high plant diversity, including a community of macrophytes (i.e. aquatic plants that grow in or near water), the main food of marsh deer in this delta (Marin et al., Reference Marin, Fernández, Dacar, Gutiérrez, Fergnani and Pereira2020). Consequently, this modified landscape appears to offer marsh deer both suitable forage and habitat conditions.

As with most large herbivores (Ripple et al., Reference Ripple, Newsome, Wolf, Dirzo, Everatt and Galetti2015), poaching is one of the main threats to marsh deer in the lower delta (Pereira et al., Reference Pereira, Varela, Aprile, Cirignoli, Orozco and Lartigau2019). The impact of this, however, varies widely throughout the region; anti-poaching controls by governmental authorities are generally insufficient or non-existent and consequently anti-poaching measures are dependent on individual properties. Large forestry properties within the delta usually employ simple poaching controls such as occasional patrols or gates with padlocks, to prevent vehicular access (JAP, pers. obs., 2020). Protection in El Oasis is through daily patrols by contracted guards, who also control access to the property at entrances. However, isolated cases of marsh deer poaching still occur (D. Artero, pers. comm., 2020). The high population density of marsh deer that we recorded could be a result of low hunting pressure, the absence of natural predators and domestic dogs, and the high primary productivity. This is plausible as small, well-protected, food-rich areas have been observed to be important for facilitating recovery of populations of other ungulate species following the cessation of poaching (Steinmetz et al., Reference Steinmetz, Chutipong, Seuaturien, Chirngsaard and Khaengkhetkarn2010).

The contribution of private lands to biodiversity conservation has been underappreciated (Davies-Mostert, Reference Davies-Mostert2014), although they play a key role in ungulate conservation (East, Reference East1999; Hoffmann et al., Reference Hoffmann, Duckworth, Holmes, Mallon, Rodrigues and Stuart2015). The high density of marsh deer recorded in the plantation matrix of the study area, together with reduced mortality and an apparently high fawn recruitment (authors, pers. obs., 2020) suggest that the marsh deer subpopulation inhabiting this large property could be contributing to maintenance of the population in the wider landscape. Immigration of individuals from source populations is important for replenishing populations of ungulates affected by overhunting and/or low habitat quality (Novaro et al., Reference Novaro, Redford and Bodmer2000; Seydack et al., Reference Seydack, Vermeulen and Huisamen2000; Naranjo & Bodmer, Reference Naranjo and Bodmer2007; Vongkhamheng et al., Reference Vongkhamheng, Johnson and Sunquist2013). As the lower delta is being modified rapidly (mostly to develop pastures for cattle ranching; Sica et al., Reference Sica, Quintana, Radeloff and Gavier-Pizarro2016) and poaching is widespread in this wetland (Pereira et al., Reference Pereira, Varela, Aprile, Cirignoli, Orozco and Lartigau2019), the potential role of El Oasis as a source of marsh deer should be evaluated and considered as part of the conservation strategy for this population.

We were able to capture high-resolution imagery of marsh deer with UAVs, and to detect individual deer from photographs taken at an altitude of 45 m. Marsh deer did not appear to respond to UAVs, a matter also noted for other ungulates (Christie et al., Reference Christie, Gilbert, Brown, Hatfield and Hanson2016). This is a potential advantage of surveys with UAVs, although further examination of this is needed under a range of circumstances (Schroeder et al., Reference Schroeder, Panebianco, González Musso and Carmanchahi2020). We designed the survey to minimize sampling errors and biases in estimating abundance, such as not detecting an individual that was actually present or double counting individuals (Brack et al., Reference Brack, Kindel and Oliveira2018). Firstly, flights were conducted during winter, when individuals were most exposed as canopy cover is at its lowest. Nevertheless, some deer could have been present in the surveyed area but unavailable for detection (e.g. hidden beneath bushes), contributing to availability bias (Brack et al., Reference Brack, Kindel and Oliveira2018). As demonstrated for other mammal species, adjusting for availability bias can produce substantially larger and less biased abundance estimates (Pollock et al., Reference Pollock, Marsh, Lawler and Alldredge2006; Heide-Jørgensen & Laidre, Reference Heide-Jørgensen and Laidre2015; Sucunza et al., Reference Sucunza, Danilewicz, Cremer, Andriolo and Zerbini2018). Consequently, addressing availability bias in any future surveys of marsh deer with drones, by incorporating auxiliary information (e.g. telemetry data, ground-based surveys) or using temporally replicated flights (Brack et al., Reference Brack, Kindel and Oliveira2018), could produce more accurate and precise density estimates. Secondly, a multiple-observer protocol was employed to minimize failures to detect individuals during the manual analysis of the photographs. Thirdly, double counts of individuals in overlapped sequential images were avoided by analysing successive images. However, the manual examination of photographs was time consuming. The use of computer recognition algorithms (Torney et al., Reference Torney, Dobson, Borner, Lloydjones, Moyer and Maliti2016; Corcoran et al., Reference Corcoran, Winsen, Sudholz and Hamilton2021) to automate the detection of marsh deer from photographs could potentially decrease the time required for image analysis.

Marsh deer in the lower delta of the Paraná River are exploiting a matrix of commercial tree plantations, and new dietary resources (invasive exotic plant species; Marin et al., Reference Marin, Fernández, Dacar, Gutiérrez, Fergnani and Pereira2020), matters that have not been observed elsewhere in the species' range. This apparent ecological flexibility of the marsh deer may provide it with greater resilience to land-use pressures in the study region. By 2050, habitat for mammals is expected to decline by 5–16% globally compared to 2015 levels, with South America one of the regions most affected (Baisero et al., Reference Baisero, Visconti, Pacifici, Cimatti and Rondinini2020). To promote sustainable forestry production in the lower delta and facilitate the conservation of the marsh deer, measures focused on building consensus among key regional stakeholders (Fracassi et al., Reference Fracassi, Pereira, Mujica, Hauri and Quintana2017), the use of forestry practices adapted to local conditions (Fracassi et al., Reference Fracassi, Quintana, Pereira and Mujica2014), the promotion of interdisciplinary research to generate robust data (Pereira et al., Reference Pereira, Fergnani, Fernández, Fracassi, González and Lartigau2018), and the employment of mechanisms to increase the value of the species (such as the FSC ecosystems services certificate obtained by El Oasis for the conservation of the marsh deer) are needed. Such actions, along with appropriate design and management of commercial tree plantations and other private lands, offer an opportunity for the conservation of this population of the Vulnerable marsh deer. Protection of the remaining native marshlands and restoration of the original woodlands will also be necessary to maintain the integrity of co-evolved plant–herbivore interactions in this wetland.

Acknowledgements

We thank the volunteers who took part in this research (G. Aguirre, D. Alercia, L. Araki, L. Bazán, J. Becerra Ruiz, A. Bellotti, M. Cabrera, J. Cappiello, A. Cardón, P. Casco, F. Castro, L. Cocchiararo, C. Condomiña, M. D'Occhio, C. Esponda, M. Falcón, A. Fanloo, A. Forlenza, F. Frattini, J. Galiano, M. Garbalena, N. García del Castello, J. Ghiorzo, V. Lafarga, B. Malagisi, M. Mieres, A. Olivera, G. Pace, O. Pacheco, S. Palomeque, B. Pérez, N. Rodríguez, P. Rodríguez, I. Rueda, S. Saavedra, R. Sánchez, L. Smith, M. Vázquez and F. Viviani); Arauco Argentina S.A., and particularly Diego Artero, for research permits and logistical support; Fundación Ambiente y Recursos Naturales and Toyota Argentina S.A. for financial support; and Jeffrey J. Thompson and two anonymous reviewers for constructive comments.

Author contributions

Conception of the project idea, data analysis: JP, DV, CP; study design, fieldwork, writing: all authors.

Conflicts of interest

None.

Ethical standards

This study abided by the Oryx guidelines on ethical standards and did not involve human subjects or collection of specimens.

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Figure 0

Table 1 Reported densities of the marsh deer Blastocerus dichotomus, by location, with habitat type, survey method and source.

Figure 1

Fig. 1 (a) The locations of transects surveyed, using UAVs, for the marsh deer Blastocerus dichotomus within the plantation forestry landscape of El Oasis property, in the lower delta of the Paraná River, Argentina, during 6–8 August 2019, and the marsh deer records obtained. (b) A heatmap of these records, with a scale from high (black) to low (white) concentration of records.

Figure 2

Plate 1 Examples of records of the marsh deer Blastocerus dichotomus in different habitat types from photographs taken during UAV flights at an altitude of 45 m above ground level within the El Oasis property in the lower delta of the Paraná River, Argentina (Fig. 1), during 6–8 August 2019.