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STEERER: Resolving Scale Variations for Counting and Localization via Selective Inheritance Learning

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Scale variation is a deep-rooted problem in object counting, which has not been effectively addressed by existing scale-aware algorithms. An important factor is that they typically involve cooperative learning across multi-resolutions, which could be suboptimal for learning the most discriminative features from each scale. In this paper, we propose a novel method termed STEERER (\textbf{S}elec\textbf{T}iv\textbf{E} inh\textbf{ER}itance l\textbf{E}a\textbf{R}ning) that addresses the issue of scale variations in object counting. STEERER selects the most suitable scale for patch objects to boost feature extraction and only inherits discriminative features from lower to higher resolution progressively. The main insights of STEERER are a dedicated Feature Selection and Inheritance Adaptor (FSIA), which selectively forwards scale-customized features at each scale, and a Masked Selection and Inheritance Loss (MSIL) that helps to achieve high-quality density maps across all scales. Our experimental results on nine datasets with counting and localization tasks demonstrate the unprecedented scale generalization ability of STEERER. Code is available at \url{https://github.com/taohan10200/STEERER}.

Tao Han, Lei Bai, Lingbo Liu, Wanli Ouyang• 2023

Related benchmarks

TaskDatasetResultRank
Crowd CountingShanghaiTech Part A (test)
MAE54.5
271
Crowd CountingShanghaiTech Part B (test)
MAE5.8
208
Crowd CountingShanghaiTech Part A
MAE54.5
155
Crowd CountingUCF-QNRF (test)
MAE74.3
113
Crowd CountingJHU-CROWD++ (test)
MAE54.3
57
Crowd CountingUCF-QNRF
MAE74.3
46
Crowd CountingShanghaiTech B 12 (test)
MAE5.8
10
Crowd CountingUCF-QNRF 10 (test)
MAE74.3
9
Crowd LocalizationSynMVCrowd
Precision88.83
9
Crowd CountingSynMVCrowd
MAE22.81
9
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