A Visual SLAM Loop Closure Detection Method for Spraying Robots in Hilly Orchard
You Cai, Gexiang Zhang, Kaiyi Xian, Jianping Dong, Xiangyu Gu, Yu Liu, Bo Liu
- 发表年份
- 2024
- 引用次数
- 1
摘要
In the challenging environment of hilly orchards, vegetation occlusion, and variable lighting conditions lead to sparse and unevenly distributed visual features. Moreover, the extensive area covered by these orchards results in a vast volume of images that require efficient real-time processing. This paper introduces an enhanced loop closure detection method tailored for hilly orchard settings to address these issues. The proposed approach integrates adaptive threshold-adjusted uniform ORB feature extraction with CLBP features through the CBAM attention mechanism, creating a novel feature descriptor that emphasizes key information. Furthermore, it employs HNSW to expedite feature matching and adopts MAGSAC++ to refine geometric consistency verification. Experimental evaluations on a dataset of 2,347 images from hilly orchards demonstrate that our method achieves a precision rate of 75.75% with an average runtime of 8.73 seconds. Compared to the traditional ORB vocabulary model, this represents a significant improvement: the precision rate has increased by 21.73%, while the runtime has been reduced by $\mathbf{1 6. 9 2 \%}$. These enhancements underscore the method’s superior real-time performance and accuracy in detecting loop closures within hilly orchard environments, thereby providing robust technical support for the efficient operation of spraying robots in such settings.
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