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Detection and segmentation of overlapped fruits based on optimized mask R-CNN application in apple harvesting robot

机译:基于优化掩模R-CNN应用的重叠果实在Apple收获机器人中的检测与分割

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摘要

In order to better apply the good performance of feature extraction and target detection used in deep learning to fruit detection in orchards, a model of harvesting robot vision detector based on Mask Region Convolutional Neural Network (Mask R-CNN) is proposed. The model was improved to make it more suitable for the recognition and segmentation of overlapped apples. Residual Network (ResNet) combined with Densely Connected Convolutional Networks (DenseNet) can greatly reduce input parameters and is used as a backbone network for feature extraction. Feature maps are input to the Region Proposal Network (RPN) for end-to-end training to generate the region of interest (Rot), and finally the mask is generated by the full convolution network (FCN) to get the region where the apple is located. The method is tested by a random test set with 120 images, and the Precision Rate has reached 97.31%, and the Recall Rate has reached 95.70%. And the recognition speed is faster, which can meet the requirements of the apple harvesting robot's vision system.
机译:为了更好地应用在果园中深入学习的果实检测中使用的特征提取和目标检测的良好性能,提出了一种基于掩模区域卷积神经网络(掩模R-CNN)的收获机器人视觉探测器模型。该模型得到改进,使其更适合于识别和分割重叠苹果。残余网络(Reset)与密集连接的卷积网络(DENSENET)相结合,可以大大减少输入参数,用作特征提取的骨干网。特征贴图是输入的区域提案网络(RPN),用于端到端培训,以生成兴趣区域(腐烂),最后掩码由完整的卷积网络(FCN)生成,以获取Apple的区域位于。该方法由具有120个图像的随机测试集进行测试,精度率达到97.31%,召回率达到95.70%。并且识别速度更快,这可以满足Apple收获机器人的视觉系统的要求。

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