Deep neural networks have attracted considerable attention because of their state-of-the-art performance on a variety of image restoration tasks, including image completion, denoising, and segmentation. However, their record of performance is built upon extremely large datasets. In many cases (for example, electron microscopy), it is extremely labor intensive, if not impossible, to acquire tens of thousands of images for a single project. The present work shows the possibility of attaining high-accuracy image segmentation, isolating regions of interest, for small datasets of transmission electron micrographs by employing encoder-decoder neural networks and image augmentation.