V2X-AHD:Vehicle-to-Everything Cooperation Perception via Asymmetric Heterogenous Distillation Network
Caizhen He, Hai Wang, and Long Chen, Tong Luo, and Yingfeng Cai

TL;DR
This paper introduces V2X-AHD, a novel vehicle-to-everything cooperative perception system that enhances 3D object detection accuracy using asymmetric heterogeneous distillation, sparse convolutional backbone, and multi-head self-attention, achieving state-of-the-art results.
Contribution
The paper presents a new multi-view cooperation perception framework with asymmetric distillation and a lightweight backbone, improving shape prediction and detection accuracy in cooperative perception.
Findings
Achieves state-of-the-art detection accuracy on V2Xset dataset.
Reduces network parameters while maintaining high performance.
Effectively improves shape prediction in cooperative perception.
Abstract
Object detection is the central issue of intelligent traffic systems, and recent advancements in single-vehicle lidar-based 3D detection indicate that it can provide accurate position information for intelligent agents to make decisions and plan. Compared with single-vehicle perception, multi-view vehicle-road cooperation perception has fundamental advantages, such as the elimination of blind spots and a broader range of perception, and has become a research hotspot. However, the current perception of cooperation focuses on improving the complexity of fusion while ignoring the fundamental problems caused by the absence of single-view outlines. We propose a multi-view vehicle-road cooperation perception system, vehicle-to-everything cooperative perception (V2X-AHD), in order to enhance the identification capability, particularly for predicting the vehicle's shape. At first, we propose an…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Advanced Neural Network Applications · Traffic and Road Safety
