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Research on Detection Technology of Various Fruit Disease Spots Based on Mask R-CNN

机译:基于Mask R-CNN的各种水果病斑检测技术研究

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摘要

In order to solve the current fruit surface disease detection algorithm’s problems of low accuracy, slow speed and heavy workload of quality classification, this paper takes apple, peach, orange, and pear as the research objects and proposes a model based on Mask R-CNN for detecting disease spots on the surface of fruits which accurately detects the defects on the surface of the fruit after the picking robot recognizes and locates the fruit. By adding a bottom-up horizontal connection path, the feature pyramid (FPN) structure of Mask R-CNN is improved to enhance the fusion of high and low-level features. Experimental research shows that the improved Mask R-CNN algorithm has a detection accuracy of more than 95% for the four kinds of fruit surface lesions, and the detection speed reaches 2.6 frames per second when using GPU, which is significantly better than Fast R-CNN and SSD algorithms and has good detection performance and robustness.
机译:为了解决目前的果实疾病检测算法的低精度问题,质量分类的慢速和繁重的工作量,苹果,桃子,橙子和梨作为研究对象,提出了一种基于面膜R-CNN的模型用于检测水果表面上的疾病斑点,在拣选机器人识别和定位果实后,精确地检测到果实表面上的缺陷。通过添加自下而上的水平连接路径,提高了掩模R-CNN的特征金字塔(FPN)结构,以增强高电平和低电平特征的融合。实验研究表明,改进的掩模R-CNN算法对于四种果实表面病变的检测精度超过95%,并且当使用GPU时,检测速度达到每秒2.6帧,这明显优于快速R- CNN和SSD算法,具有良好的检测性能和鲁棒性。

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