Utilize este identificador para citar ou criar um atalho para este documento: https://hdl.handle.net/10923/27112
Título: Siamese networks for cat re-identification: exploring neural models for cat instance recognition
Autor(es): Trein, Tobias
Data de Publicação: 2024
Palavras-chave: ANIMAL RE-IDENTIFICATION
SIAMESE NEURAL NETWORKS
DEEP LEARNING APPLICATIONS
CONVOLUTIONAL NEURAL NETWORKS
COMPUTER VISION
Resumo: Street cats in urban areas often rely on human intervention for survival, leading to challenges in population control and welfare management. In April 2023, Hello Inc., a Chinese urban mobility company, launched the Hello Street Cat initiative to address these issues. The project deployed over 21,000 smart feeding stations across 14 cities in China, integrating livestreaming cameras and treat dispensers activated through user donations. It also promotes the Trap-Neuter-Return (TNR) method, supported by a community-driven platform, HelloStreetCatWiki, where volunteers catalog and identify cats. However, manual identification is inefficient and unsustainable, creating a need for automated solutions. This study explores Deep Learning-based models for re-identifying street cats in the Hello Street Cat initiative. A dataset of 2,796 images of 69 cats was used to train Siamese Networks with EfficientNetB0, MobileNet and VGG16 as base models, evaluated under contrastive and triplet loss functions. VGG16 paired with contrastive loss emerged as the most effective configuration, achieving up to 97% accuracy and an F1 score of 0.9344 during testing. The approach leverages image augmentation and dataset refinement to overcome challenges posed by limited data and diverse visual variations. These findings underscore the potential of automated cat re-identification to streamline population monitoring and welfare efforts. By reducing reliance on manual processes, the method offers a scalable and reliable solution for communitydriven initiatives. Future research will focus on expanding datasets and developing real-time implementations to enhance practicality in large-scale deployments.
URI: https://hdl.handle.net/10923/27112
Aparece nas Coleções:TCC Ciência da Computação

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