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基于改进Mask R-CNN的番茄茎秆分类方法
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Tomato Stem Classification Method Based on Improved Mask R-CNN
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    摘要:

    为实现对与背景近色、不规则细长型目标——番茄茎秆的分类,提出了一种基于改进Mask R-CNN的番茄茎秆分类算法. 采集日间和夜间番茄植株图像,使用labelme分别制作日间和夜间番茄茎秆分类数据集. 结合迁移学习方法,使用两种数据集分别训练Mask R-CNN模型. 对Mask分支进行了改进,在生成掩膜的同时生成其最小外接矩,并提出了用于评估掩膜边框精确率的评价指标Re及用于综合评估模型性能的像素级评价指标. 试验结果显示:夜间及日间茎秆分类模型的像素F1值、像素全类平均正确率分别为48.82%、50.03%和57.76%、56.06%. Mask分支改进后掩膜边框精确率得到了显著提高,平均每幅图像检测耗时0.31 s,满足实际应用对算法实时性的需求,可为植株修剪等工作的智能化提供方法支持.

    Abstract:

    To realize the tomato stem classification of irregular thin and long objects with a similar color to the background, an algorithm for tomato stem classification based on improved Mask R-CNN was proposed. First, the images of daytime and night tomato plants were collected, and stems in the images were labeled using the Labelme to produce data sets of tomato stem classification at daytime and night, separately. Then, the Mask R-CNN model was trained separately using the two data sets with the transfer learning method. The Mask branch was improved to generate its minimum external moment when the Mask was produced, an evaluation index Re was proposed to evaluate the accuracy of the Mask border, and pixel-level evaluation indexes were proposed to comprehensively evaluate the performance of the model. Test results show that the pixel F1 score and pixel mean average precision of the night and day stem classification model are 48.82%, 50.03%, and 57.76%, 56.06%, respectively. After the improvement of the Mask branch, the accuracy of the mask border is significantly improved. The average recognition time of each image is 0.31 s, indicating that the recognition model can meet the real-time requirements of the algorithm in practical applications. It can provide method support for the intelligence of plant pruning and other works.

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项荣?,张茂琛.基于改进Mask R-CNN的番茄茎秆分类方法[J].湖南大学学报:自然科学版,2023,(2):31~39

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  • 在线发布日期: 2023-03-06
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