2024
DOI: 10.1051/e3sconf/202447203015
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Multi-shift spatio-temporal features assisted deep neural network for detecting the intrusion of wild animals using surveillance cameras

R. Jeen Retna Kumar,
Berakhah F. Stanley

Abstract: The coexistence of human populations and wildlife in shared habitats necessitates the development of effective intrusion detection systems to mitigate potential conflicts and promote harmonious relationships. Detecting the intrusion of wild animals, especially in areas where human-wildlife conflicts are common, is essential for both human and animal safety. Animal intrusion has become a serious threat to crop yield, impacting food security and reducing farmer profits. Rural residents and forestry workers are i… Show more

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