Detection of Agricultural Pests Based on YOLO

Author:

Luo Yingjie,Ni Lei,Cai Fangkai,Wang Daming,Luo Yang,Li Xiaoyu,Fu Ning,Tang Jiangwen,Xue Liang

Abstract

Abstract Focus on the problem of the species pests are difficult to identify in agricultural production an application based on the YOLO algorithm is presented. The algorithm extracts features fastly and complete detection task simultaneously. Through collecting agricultural pests, the algorithm establishes a data-set build target object detection model and train them, the problem of difficulties in identifying agricultural pest species and locating them has been solved. The result shows that the mAP’value of YOLO algorithm is 92.42%, the prediction precision is 96.8%. The algorithm has a high recognition rate, and identify the species of pests fastly and accurately, it can meet the detection and identification requirements.

Publisher

IOP Publishing

Subject

Computer Science Applications,History,Education

Reference13 articles.

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2. Image recognition of garden pests based on improved residual networks;Chen;Journal of Agricultural Machinery,2019

3. RGB-D Image Multi-Target Detection Method Based on 3D DSF R-CNN;Hu;International Journal of Pattern Recognition and Artificial Intelligence,2019

4. Computer Vision and Pattern Recognition;Girshick;CoRR,2015

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