A Full-Stage Refined Proposal Algorithm for Suppressing False Positives in Two-Stage CNN-Based Detection Methods
Qiang Guo, Rubo Zhang, Bingbing Zhang, Junjie Liu, Jianqing Liu

TL;DR
This paper introduces a comprehensive Full-stage Refined Proposal (FRP) algorithm that significantly reduces false positives in two-stage CNN pedestrian detection, improving accuracy especially on resource-limited devices.
Contribution
It presents novel training and inference strategies, including TFRP, CFRP, and SFRP, to effectively filter low-quality proposals and suppress false positives at all detection stages.
Findings
Effective false positive suppression demonstrated on multiple benchmarks.
Enhanced detection accuracy on embedded edge devices.
Improved model robustness through multi-stage proposal refinement.
Abstract
False positives in pedestrian detection remain a challenge that has yet to be effectively resolved. To address this issue, this paper proposes a Full-stage Refined Proposal (FRP) algorithm aimed at eliminating these false positives within a two-stage CNN-based pedestrian detection framework. The main innovation of this work lies in employing various pedestrian feature re-evaluation strategies to filter out low-quality pedestrian proposals during both the training and testing stages. Specifically, in the training phase, the Training mode FRP algorithm (TFRP) introduces a novel approach for validating pedestrian proposals to effectively guide the model training process, thereby constructing a model with strong capabilities for false positive suppression. During the inference phase, two innovative strategies are implemented: the Classifier-guided FRP (CFRP) algorithm integrates a…
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Taxonomy
TopicsAdvanced Neural Network Applications · Gait Recognition and Analysis · Video Surveillance and Tracking Methods
