cs.AI updates on arXiv.org 07月04日
Wildlife Target Re-Identification Using Self-supervised Learning in Non-Urban Settings
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本文研究了自监督学习在野生动物重识别领域的应用,通过无监督方式自动提取个体图像对,训练自监督模型,在多种野生动物下游任务中表现出优越性。

arXiv:2507.02403v1 Announce Type: cross Abstract: Wildlife re-identification aims to match individuals of the same species across different observations. Current state-of-the-art (SOTA) models rely on class labels to train supervised models for individual classification. This dependence on annotated data has driven the curation of numerous large-scale wildlife datasets. This study investigates self-supervised learning Self-Supervised Learning (SSL) for wildlife re-identification. We automatically extract two distinct views of an individual using temporal image pairs from camera trap data without supervision. The image pairs train a self-supervised model from a potentially endless stream of video data. We evaluate the learnt representations against supervised features on open-world scenarios and transfer learning in various wildlife downstream tasks. The analysis of the experimental results shows that self-supervised models are more robust even with limited data. Moreover, self-supervised features outperform supervision across all downstream tasks. The code is available here https://github.com/pxpana/SSLWildlife.

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自监督学习 野生动物重识别 图像对 视频数据
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