Pre-trained priors from foundation models drive substantial performance variance in person re-identification, with simple fine-tuning of large models reaching SOTA results while staying close to initial parameters.
Aonet: attentional occlusion-aware network for occluded person re-identification
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Not All Starting Points Are Equal: Pre-trained Priors and Their Outsized Impact on Person Identification
Pre-trained priors from foundation models drive substantial performance variance in person re-identification, with simple fine-tuning of large models reaching SOTA results while staying close to initial parameters.