工具箱
软件部署
适应(眼睛)
计算机科学
插件
GSM演进的增强数据速率
边缘计算
人工神经网络
分布式计算
计算机体系结构
软件工程
人工智能
操作系统
神经科学
程序设计语言
心理学
作者
Jiaqi Wu,Shihao Zhang,Simin Chen,Lixu Wang,Zehua Wang,Wei Chen,Fangyuan He,Zijian Tian,F. Richard Yu,Victor C. M. Leung
出处
期刊:Cornell University - arXiv
日期:2024-12-24
标识
DOI:10.48550/arxiv.2412.18230
摘要
Edge computing has emerged as a key paradigm for deploying deep learning-based object detection in time-sensitive scenarios. However, existing edge detection methods face challenges: 1) difficulty balancing detection precision with lightweight models, 2) limited adaptability of generalized deployment designs, and 3) insufficient real-world validation. To address these issues, we propose the Edge Detection Toolbox (ED-TOOLBOX), which utilizes generalizable plug-and-play components to adapt object detection models for edge environments. Specifically, we introduce a lightweight Reparameterized Dynamic Convolutional Network (Rep-DConvNet) featuring weighted multi-shape convolutional branches to enhance detection performance. Additionally, we design a Sparse Cross-Attention (SC-A) network with a localized-mapping-assisted self-attention mechanism, enabling a well-crafted joint module for adaptive feature transfer. For real-world applications, we incorporate an Efficient Head into the YOLO framework to accelerate edge model optimization. To demonstrate practical impact, we identify a gap in helmet detection -- overlooking band fastening, a critical safety factor -- and create the Helmet Band Detection Dataset (HBDD). Using ED-TOOLBOX-optimized models, we address this real-world task. Extensive experiments validate the effectiveness of ED-TOOLBOX, with edge detection models outperforming six state-of-the-art methods in visual surveillance simulations, achieving real-time and accurate performance. These results highlight ED-TOOLBOX as a superior solution for edge object detection.
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