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Novel green-fruit detection algorithm based on D2D framework

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摘要 In the complex orchard environment,the efficient and accurate detection of object fruit is the basic requirement to realize the orchard yield measurement and automatic harvesting.Sometimes it is hard to differentiate between the object fruits and the background because of the similar color,and it is challenging due to the ambient light and camera angle by which the photos have been taken.These problems make it hard to detect green fruits in orchard environments.In this study,a two-stage dense to detection framework(D2D)was proposed to detect green fruits in orchard environments.The proposed model was based on multi-scale feature extraction of target fruit by using feature pyramid networks MobileNetV2+FPN structure and generated region proposal of target fruit by using Region Proposal Network(RPN)structure.In the regression branch,the offset of each local feature was calculated,and the positive and negative samples of the region proposals were predicted by a binary mask prediction to reduce the interference of the background to the prediction box.In the classification branch,features were extracted from each sub-region of the region proposal,and features with distinguishing information were obtained through adaptive weighted pooling to achieve accurate classification.The new proposed model adopted an anchor-free frame design,which improves the generalization ability,makes the model more robust,and reduces the storage requirements.The experimental results of persimmon and green apple datasets show that the new model has the best detection performance,which can provide theoretical reference for other green object detection.
出处 《International Journal of Agricultural and Biological Engineering》 SCIE CAS 2022年第1期251-259,F0003,共10页 国际农业与生物工程学报(英文)
基金 the Natural Science Foundation of Shandong Province in China(Grant No.ZR2020MF076) the Focus on Research and Development Plan in Shandong Province(Grant No.2019GNC106115) the National Nature Science Foundation of China(Grant No.62072289) the Shandong Province Higher Educational Science and Technology Program(Grant No.J18KA308) the Taishan Scholar Program of Shandong Province of China.
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