期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Picking point localization method based on semantic reasoning for complex picking scenarios in vineyards 被引量:1
1
作者 Xuemin Lin Jinhai Wang +3 位作者 Jinshuan Wang Huiling Wei Mingyou Chen Lufeng Luo 《Artificial Intelligence in Agriculture》 2025年第4期744-756,共13页
In the complex orchard environment,precise picking point localization is crucial for the automation of fruit picking robots.However,existing methods are prone to positioning errors when dealing with complex scenarios ... In the complex orchard environment,precise picking point localization is crucial for the automation of fruit picking robots.However,existing methods are prone to positioning errors when dealing with complex scenarios such as short peduncles,partial occlusion,or complete misidentification,which can affect the actual work efficiency of the fruit picking robot.This study proposes an enhanced picking point localization method based on semantic reasoning for complex picking scenarios in vineyard.It innovatively designs three modules:the semantic reasoning module(SRM),the ROI threshold adjustment strategy(RTAS),and the picking point location optimization module(PPOM).The SRM is applied to handle the scenarios of grape peduncles being obstructed by obstacles,partial misidentification of peduncles,and complete misidentification of peduncles.The RTAS addresses the issue of low and short peduncles during the picking process.Finally,the PPOM optimizes the final position of the picking point,allowing the robotic arm to perform the picking operation with greater flexibility.Experimental results show that SegFormer achieves an mIoU(mean Intersection over Union)of 84.54%,with B_IoU and P_IoU reaching 73.90%and 75.63%,respectively.Additionally,the success rate of the improved fruit picking point localization algorithm reached 94.96%,surpassing the baseline algorithm by 8.12%.The algorithm's average processing time is 0.5428±0.0063 s,meeting the practical requirements for real-time picking. 展开更多
关键词 Semantic reasoning picking robot Unstructured environment picking point localization Complex picking scenarios
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部