计算机科学
稳健性(进化)
目标检测
推论
软件部署
棱锥(几何)
数据挖掘
特征(语言学)
人工智能
背景(考古学)
可扩展性
坑洞(地质)
机器学习
智能交通系统
延迟(音频)
灵敏度(控制系统)
特征提取
特征模型
实时计算
冗余(工程)
融合机制
传感器融合
软件可移植性
行人检测
作者
Zhihai Liu,Ruijie Liu,Wenhao Sun,Jinfeng Ma
摘要
ABSTRACT Detecting potholes in complex environments poses challenges such as varying illumination, shadows, and occlusions. Traditional methods often suffer from insufficient detection accuracy and poor real‐time performance. To enhance detection robustness without sacrificing inference speed, this paper adopts the RT‐DETR (Real‐Time Detection Transformer) framework—which requires no NMS (Non‐Maximum Suppression) post‐processing and features an efficient hybrid encoder—as its foundation. We propose the lightweight and efficient ARCH‐RTDETR detection model. The model introduces targeted enhancements to the backbone, feature‐fusion module, and multi‐scale architecture. Specifically, an AFGCA (Adaptive Fusion Global Context Attention) mechanism strengthens sensitivity to subtle cues; RepBN (Reparameterized Batch Normalization) is deeply integrated into the AIFI (Adaptive Instance Feature Integration) module to optimize feature distributions and increase multi‐scale representational capacity; and the proposed CA‐HSFPN (Coordinate Attention‐guided Hierarchical Scale Feature Pyramid Network) improves the effectiveness of cross‐scale feature fusion. Experiments on diverse datasets show that ARCH‐RTDETR achieves an average detection accuracy of 85%, outperforming the RT‐DETR baseline by 2.9%, while also improving detection precision and inference efficiency. These results indicate strong potential for deployment in intelligent transportation systems. This research provides a technical reference for small object detection, addressing the low efficiency of traditional manual inspections and the high detection latency of existing equipment in intelligent transportation systems, thereby offering a reliable technical solution for road safety assurance.
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