An Efficient Wide-Range Pseudo-3D Vehicle Detection Using A Single Camera
Zhupeng Ye, Yinqi Li, Zejian Yuan

TL;DR
This paper introduces a novel pseudo-3D vehicle detection method using a single camera that effectively captures wide-range and detailed vehicle information, outperforming traditional bounding box approaches.
Contribution
It proposes a new detection framework combining extended bounding boxes and shape/pose representations with a joint loss for improved accuracy and stability.
Findings
Achieves high-precision wide-range vehicle detection
Effectively captures vehicle shape and pose information
Demonstrates superior performance on a self-built dataset
Abstract
Wide-range and fine-grained vehicle detection plays a critical role in enabling active safety features in intelligent driving systems. However, existing vehicle detection methods based on rectangular bounding boxes (BBox) often struggle with perceiving wide-range objects, especially small objects at long distances. And BBox expression cannot provide detailed geometric shape and pose information of vehicles. This paper proposes a novel wide-range Pseudo-3D Vehicle Detection method based on images from a single camera and incorporates efficient learning methods. This model takes a spliced image as input, which is obtained by combining two sub-window images from a high-resolution image. This image format maximizes the utilization of limited image resolution to retain essential information about wide-range vehicle objects. To detect pseudo-3D objects, our model adopts specifically designed…
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Taxonomy
TopicsAdvanced Neural Network Applications · Video Surveillance and Tracking Methods · Autonomous Vehicle Technology and Safety
MethodsSemi-Pseudo-Label
