TL;DR
This paper introduces DAOT, a novel domain adaptation method for crowd counting that aligns domain-agnostic factors using optimal transport, improving cross-domain performance by addressing intra- and inter-dataset variations.
Contribution
The paper proposes a new DAOT strategy that aligns domain-agnostic factors via optimal transport, addressing intra-dataset differences often overlooked by existing methods.
Findings
Outperforms existing methods on five crowd-counting benchmarks.
Demonstrates strong generalizability across diverse datasets.
Effectively reduces domain gaps by aligning domain-agnostic factors.
Abstract
Domain adaptation is commonly employed in crowd counting to bridge the domain gaps between different datasets. However, existing domain adaptation methods tend to focus on inter-dataset differences while overlooking the intra-differences within the same dataset, leading to additional learning ambiguities. These domain-agnostic factors, e.g., density, surveillance perspective, and scale, can cause significant in-domain variations, and the misalignment of these factors across domains can lead to a drop in performance in cross-domain crowd counting. To address this issue, we propose a Domain-agnostically Aligned Optimal Transport (DAOT) strategy that aligns domain-agnostic factors between domains. The DAOT consists of three steps. First, individual-level differences in domain-agnostic factors are measured using structural similarity (SSIM). Second, the optimal transfer (OT) strategy is…
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