Improved Wildlife Recognition through Fusing Camera Trap Images and Temporal Metadata

Author:

Liu Lei12,Mou Chao123ORCID,Xu Fu123

Affiliation:

1. School of Information Science and Technology, Beijing Forestry University, Beijing 100083, China

2. Engineering Research Center for Forestry-Oriented Intelligent Information Processing of National Forestry and Grassland Administration, Beijing 100083, China

3. State Key Laboratory of Efficient Production of Forest Resources, Beijing 100083, China

Abstract

Camera traps play an important role in biodiversity monitoring. An increasing number of studies have been conducted to automatically recognize wildlife in camera trap images through deep learning. However, wildlife recognition by camera trap images alone is often limited by the size and quality of the dataset. To address the above issues, we propose the Temporal-SE-ResNet50 network, which aims to improve wildlife recognition accuracy by exploiting the temporal information attached to camera trap images. First, we constructed the SE-ResNet50 network to extract image features. Second, we obtained temporal metadata from camera trap images, and after cyclical encoding, we used a residual multilayer perceptron (MLP) network to obtain temporal features. Finally, the image features and temporal features were fused in wildlife identification by a dynamic MLP module. The experimental results on the Camdeboo dataset show that the accuracy of wildlife recognition after fusing the image and temporal information is about 93.10%, which is an improvement of 0.53%, 0.94%, 1.35%, 2.93%, and 5.98%, respectively, compared with the ResNet50, VGG19, ShuffleNetV2-2.0x, MobileNetV3-L, and ConvNeXt-B models. Furthermore, we demonstrate the effectiveness of the proposed method on different national park camera trap datasets. Our method provides a new idea for fusing animal domain knowledge to further improve the accuracy of wildlife recognition, which can better serve wildlife conservation and ecological research.

Funder

National Key R&D Program of China

Emergency Open Competition Project of National Forestry and Grassland Administration

Outstanding Youth Team Project of Central Universities

Publisher

MDPI AG

Reference43 articles.

1. Brondizio, E.S., Settele, J., Díaz, S., and Ngo, H.T. (2019). Global Assessment Report on Biodiversity and Ecosystem Services of the Intergovernmental Science-Policy Platform on Biodiversity and Ecosystem Services, IPBES secretariat.

2. A Review of Camera Trapping for Conservation Behaviour Research;Caravaggi;Remote Sens. Ecol. Conserv.,2017

3. Feng, L., Zhao, Y., Sun, Y., Zhao, W., and Tang, J. (2021). Action Recognition Using a Spatial-Temporal Network for Wild Felines. Animals, 11.

4. Camera Traps and Activity Signs to Estimate Wild Boar Density and Derive Abundance Indices;Massei;Pest Manag. Sci.,2018

5. Perspectives in Machine Learning for Wildlife Conservation;Tuia;Nat. Commun.,2022

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