John Atanbori
Recognising animals based on distinctive body patterns, such as stripes, spots, or other markings, in night images is a complex task in computer vision. Existing methods for detecting animals in images often rely on colour information, which is not always available in night images, posing a challenge for pattern recognition in such conditions. Nevertheless, recognition at night-time is essential for most wildlife, biodiversity, and conservation applications. The SPOTS-10 dataset was created to address this challenge and to provide a resource for evaluating machine learning algorithms in situ. This dataset is an extensive collection of grayscale images showcasing diverse patterns found in ten animal species. Specifically, SPOTS-10 contains 50,000 32 x 32 grayscale images, divided into ten categories, with 5,000 images per category. The training set comprises 40,000 images, while the test set contains 10,000 images. The SPOTS-10 dataset is freely available on the project GitHub page: https://github.com/Amotica/SPOTS-10.git by cloning the repository.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Classification | SPOT-10 | Accuracy | 81.84 | DenseNet121 Distiller |
| Classification | SPOT-10 | Accuracy | 80.29 | ResNet101V2 Distiller |
| Classification | SPOT-10 | Accuracy | 79.03 | ResNet50V2 Distiller |
| Classification | SPOT-10 | Accuracy | 78.26 | MobileNet Distiller |
| Classification | SPOT-10 | Accuracy | 78.04 | MobileNetV3Small Distiller |
| Classification | SPOT-10 | Accuracy | 77.88 | MobileNetV3Large Distiller |
| Classification | SPOT-10 | Accuracy | 77.75 | NASNetMobile Distiller |
| Classification | SPOT-10 | Accuracy | 77.53 | MobileNetV2 Distiller |
| Classification | SPOT-10 | Accuracy | 77.45 | ResNet50 Distiller |