Fast detection of multiple objects in traffic scenes with a common detection framework
Qichang Hu, Sakrapee Paisitkriangkrai, Chunhua Shen, Anton van den, Hengel, Fatih Porikli

TL;DR
This paper introduces a unified, real-time detection framework for traffic signs, cars, and cyclists that shares features across classes, improving speed and robustness in traffic scene perception.
Contribution
It proposes a common detection framework with shared features for multiple object classes, enhancing detection speed and robustness over class-specific methods.
Findings
Achieves competitive accuracy on benchmark datasets.
Significantly faster detection due to shared feature extraction.
Effective in detecting traffic signs, cars, and cyclists simultaneously.
Abstract
Traffic scene perception (TSP) aims to real-time extract accurate on-road environment information, which in- volves three phases: detection of objects of interest, recognition of detected objects, and tracking of objects in motion. Since recognition and tracking often rely on the results from detection, the ability to detect objects of interest effectively plays a crucial role in TSP. In this paper, we focus on three important classes of objects: traffic signs, cars, and cyclists. We propose to detect all the three important objects in a single learning based detection framework. The proposed framework consists of a dense feature extractor and detectors of three important classes. Once the dense features have been extracted, these features are shared with all detectors. The advantage of using one common framework is that the detection speed is much faster, since all dense features need…
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