TY - GEN
T1 - Automated Identification of Individuals in Wildlife Population Using Siamese Neural Networks
AU - Dlamini, Nkosikhona
AU - Van Zyl, Terence L.
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/11/14
Y1 - 2020/11/14
N2 - Similarity learning coupled with semi-hard pair mining has been applied successfully in human individual identification using images of faces. This approach is coupled with innovative training data sampling techniques, trained to optimise a ranking loss function, aimed at increasing model performance at a minimal additional computational cost. We demonstrate that similarity learning coupled with semi-hard negative pair mining, minimising a triplet loss function, can be applied in the identification of wild animals: Lions, Zebra, Nyalas, and Chimpanzees. There is varying performance depending on the dataset being studied and the network architecture. There is improved performance on models trained using semi-hard triplets on the Chimpanzees hold out test-set data; VGG-19 achieves a 96% accuracy and DenseNet-201 90.1% accuracy. Mean average precision was measured for the different network architectures, varying performances were obtained depending on dataset and network depth.
AB - Similarity learning coupled with semi-hard pair mining has been applied successfully in human individual identification using images of faces. This approach is coupled with innovative training data sampling techniques, trained to optimise a ranking loss function, aimed at increasing model performance at a minimal additional computational cost. We demonstrate that similarity learning coupled with semi-hard negative pair mining, minimising a triplet loss function, can be applied in the identification of wild animals: Lions, Zebra, Nyalas, and Chimpanzees. There is varying performance depending on the dataset being studied and the network architecture. There is improved performance on models trained using semi-hard triplets on the Chimpanzees hold out test-set data; VGG-19 achieves a 96% accuracy and DenseNet-201 90.1% accuracy. Mean average precision was measured for the different network architectures, varying performances were obtained depending on dataset and network depth.
KW - hard negative mining
KW - semi-hard negative mining
KW - siamese neural networks
KW - similarity learning
KW - transfare-learing
KW - triplet-loss
KW - wildlife
UR - http://www.scopus.com/inward/record.url?scp=85100349956&partnerID=8YFLogxK
U2 - 10.1109/ISCMI51676.2020.9311574
DO - 10.1109/ISCMI51676.2020.9311574
M3 - Conference contribution
AN - SCOPUS:85100349956
T3 - 2020 7th International Conference on Soft Computing and Machine Intelligence, ISCMI 2020
SP - 224
EP - 228
BT - 2020 7th International Conference on Soft Computing and Machine Intelligence, ISCMI 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 7th International Conference on Soft Computing and Machine Intelligence, ISCMI 2020
Y2 - 14 November 2020 through 15 November 2020
ER -