期刊文献+
共找到4篇文章
< 1 >
每页显示 20 50 100
基于链码跟踪的边缘异物检测方法研究 被引量:1
1
作者 卢钢戈 尹长青 《机电一体化》 2012年第11期49-52,共4页
针对传统的异物检测方法不能检测出罐装、瓶装等包装产品边缘异物的缺点,提出了基于链码跟踪的边缘异物检测方法。物体边界上连续3点的绝对链码和(平均链码)可以表示边界点的切线方向:若产品边缘无异物,则边界是光滑的;若有异物存在则... 针对传统的异物检测方法不能检测出罐装、瓶装等包装产品边缘异物的缺点,提出了基于链码跟踪的边缘异物检测方法。物体边界上连续3点的绝对链码和(平均链码)可以表示边界点的切线方向:若产品边缘无异物,则边界是光滑的;若有异物存在则必然会在边界曲线上存在突变点。实验结果表明,该方法可以准确地设定检测区域,有效地检测出边缘异物,在一定程度上提高了产品异物的检出率,具有很高的实用价值。 展开更多
关键词 链码 三点链码和 平均链码 边缘异物
下载PDF
眼球边缘异物的CT定位价值探讨
2
作者 王世友 葛建云 周平 《现代中西医结合杂志》 CAS 2000年第9期817-818,共2页
关键词 眼球边缘异物 CT 诊断
下载PDF
扇形超声对眼球边缘异物的探查 被引量:4
3
作者 张哈丽 《实用眼科杂志》 CSCD 1991年第8期484-485,共2页
扇形超声常规用于心脏疾病的诊断,而用于检查眼内结构,诊断眼部疾病国内报导较少。近5年来笔者利用现有扇形超声探查了1124例,其中异物56例,本文仅讨论手术的15例球边缘异物。
关键词 眼球边缘异物 超声检查
原文传递
Attention Mechanism-Based Method for Intrusion Target Recognition in Railway
4
作者 SHI Jiang BAI Dingyuan +2 位作者 GUO Baoqing WANG Yao RUAN Tao 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI 2024年第4期541-554,共14页
The detection of foreign object intrusion is crucial for ensuring the safety of railway operations.To address challenges such as low efficiency,suboptimal detection accuracy,and slow detection speed inherent in conven... The detection of foreign object intrusion is crucial for ensuring the safety of railway operations.To address challenges such as low efficiency,suboptimal detection accuracy,and slow detection speed inherent in conventional comprehensive video monitoring systems for railways,a railway foreign object intrusion recognition and detection system is conceived and implemented using edge computing and deep learning technologies.In a bid to raise detection accuracy,the convolutional block attention module(CBAM),including spatial and channel attention modules,is seamlessly integrated into the YOLOv5 model,giving rise to the CBAM-YOLOv5 model.Furthermore,the distance intersection-over-union_non-maximum suppression(DIo U_NMS)algorithm is employed in lieu of the weighted nonmaximum suppression algorithm,resulting in improved detection performance for intrusive targets.To accelerate detection speed,the model undergoes pruning based on the batch normalization(BN)layer,and Tensor RT inference acceleration techniques are employed,culminating in the successful deployment of the algorithm on edge devices.The CBAM-YOLOv5 model exhibits a notable 2.1%enhancement in detection accuracy when evaluated on a selfconstructed railway dataset,achieving 95.0%for mean average precision(m AP).Furthermore,the inference speed on edge devices attains a commendable 15 frame/s. 展开更多
关键词 foreign object detection railway protection edge computing spatial attention module channel attention module
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部