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3 months ago

Adapted Center and Scale Prediction: More Stable and More Accurate

Wenhao Wang

Adapted Center and Scale Prediction: More Stable and More Accurate

Abstract

Pedestrian detection benefits from deep learning technology and gains rapid development in recent years. Most of detectors follow general object detection frame, i.e. default boxes and two-stage process. Recently, anchor-free and one-stage detectors have been introduced into this area. However, their accuracies are unsatisfactory. Therefore, in order to enjoy the simplicity of anchor-free detectors and the accuracy of two-stage ones simultaneously, we propose some adaptations based on a detector, Center and Scale Prediction(CSP). The main contributions of our paper are: (1) We improve the robustness of CSP and make it easier to train. (2) We propose a novel method to predict width, namely compressing width. (3) We achieve the second best performance on CityPersons benchmark, i.e. 9.3% log-average miss rate(MR) on reasonable set, 8.7% MR on partial set and 5.6% MR on bare set, which shows an anchor-free and one-stage detector can still have high accuracy. (4) We explore some capabilities of Switchable Normalization which are not mentioned in its original paper.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
pedestrian-detection-on-citypersonsACSP + EuroCity Persons
Bare MR^-2: 4.9
Heavy MR^-2: 42.5
Partial MR^-2: 6.9
pedestrian-detection-on-citypersonsACSP
Bare MR^-2: 5.6
Heavy MR^-2: 46.3
Partial MR^-2: 8.7
Reasonable MR^-2: 9.3

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Adapted Center and Scale Prediction: More Stable and More Accurate | Papers | HyperAI