CVSep 11, 2023

Interactive Class-Agnostic Object Counting

arXiv:2309.05277v112 citationsh-index: 30
Originality Incremental advance
AI Analysis

This addresses the need for more accurate object counting in various applications, though it is incremental as it builds on existing density-based counters.

The paper tackles the problem of interactive class-agnostic object counting by allowing users to provide feedback to improve accuracy, reducing mean absolute error by 30-40% on benchmarks like FSCD-LVIS and FSC-147.

We propose a novel framework for interactive class-agnostic object counting, where a human user can interactively provide feedback to improve the accuracy of a counter. Our framework consists of two main components: a user-friendly visualizer to gather feedback and an efficient mechanism to incorporate it. In each iteration, we produce a density map to show the current prediction result, and we segment it into non-overlapping regions with an easily verifiable number of objects. The user can provide feedback by selecting a region with obvious counting errors and specifying the range for the estimated number of objects within it. To improve the counting result, we develop a novel adaptation loss to force the visual counter to output the predicted count within the user-specified range. For effective and efficient adaptation, we propose a refinement module that can be used with any density-based visual counter, and only the parameters in the refinement module will be updated during adaptation. Our experiments on two challenging class-agnostic object counting benchmarks, FSCD-LVIS and FSC-147, show that our method can reduce the mean absolute error of multiple state-of-the-art visual counters by roughly 30% to 40% with minimal user input. Our project can be found at https://yifehuang97.github.io/ICACountProjectPage/.

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