Towards Locally Consistent Object Counting with Constrained Multi-stage Convolutional Neural Networks
Muming Zhao, Jian Zhang, Chongyang Zhang, Wenjun Zhang

TL;DR
This paper introduces a multi-stage CNN approach with a grid loss function to improve local consistency in density maps for high-density object counting, addressing local counting errors overlooked by global count metrics.
Contribution
It proposes a stacking CNN architecture with a grid loss for locally consistent density map generation, enhancing object counting accuracy in dense scenes.
Findings
Significant improvement over state-of-the-art on benchmark datasets.
Enhanced local consistency in density maps.
Effective multi-stage refinement process.
Abstract
High-density object counting in surveillance scenes is challenging mainly due to the drastic variation of object scales. The prevalence of deep learning has largely boosted the object counting accuracy on several benchmark datasets. However, does the global counts really count? Armed with this question we dive into the predicted density map whose summation over the whole regions reports the global counts for more in-depth analysis. We observe that the object density map generated by most existing methods usually lacks of local consistency, i.e., counting errors in local regions exist unexpectedly even though the global count seems to well match with the ground-truth. Towards this problem, in this paper we propose a constrained multi-stage Convolutional Neural Networks (CNNs) to jointly pursue locally consistent density map from two aspects. Different from most existing methods that…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · Human Pose and Action Recognition
