Versatile correlation learning for size-robust generalized counting: A new perspective

KNOWLEDGE-BASED SYSTEMS(2024)

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摘要
Generalized counting has recently emerged to count novel -class objects within a query image, leveraging limited exemplars. Although methods based on exemplar -query pairs matching have made impressive progress, they typically rely on a single correlation representation, regardless of the varying sizes of objects, which limits more accurate counting. In this paper, we introduce a novel and conceptually straightforward perspective to guide the design of our correlation mechanism that enhances the effectiveness of counting size -diversity objects. Our new perspective encompasses three key aspects: (1) Small objects typically exhibit features concentrated within limited spatial regions, underscoring the importance of an effective channel -wise correlation mechanism for small object counting. (2) Large objects tend to possess rich spatial semantics, making an effective spatialwise correlation mechanism crucial for large object counting. (3) Integrating both channel -wise and spatial -wise correlation mechanisms holds the potential to enhance counting accuracy across different object sizes. Building upon the above perspective, firstly, we propose a simple yet effective Dual -level Channel -wise Correlation (DCC) module that utilizes kernel -wise correlation and distinct correlation to encode global -to -local channelwise relationships, enhancing small objects counting accuracy. Secondly, we develop a 4D -convolution -based Spatial -aware Correlation (4DSC) module to extract local -to -local spatial correlation in 4D space, promoting large objects counting accuracy. Finally, we combine the proposed DCC and 4DSC to realize our Versatile Correlation Module (VCM) to simultaneously process both small and large objects, providing adaptability to object size diversity. Extensive experiments on the FSC-147 dataset and CARPK dataset demonstrate the effectiveness of the proposed methods and the superior performance of our counting model.
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关键词
Generalized counting,Object counting,Versatile correlation learning,Size-robust counting,Deep neural network
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