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A Recognition Method for Rice Plant Diseases and Pests Video Detection Based on Deep Convolutional Neural Network

机译:基于深度卷积神经网络的水稻病虫害视频检测识别方法

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摘要

Increasing grain production is essential to those areas where food is scarce. Increasing grain production by controlling crop diseases and pests in time should be effective. To construct video detection system for plant diseases and pests, and to build a real-time crop diseases and pests video detection system in the future, a deep learning-based video detection architecture with a custom backbone was proposed for detecting plant diseases and pests in videos. We first transformed the video into still frame, then sent the frame to the still-image detector for detection, and finally synthesized the frames into video. In the still-image detector, we used faster-RCNN as the framework. We used image-training models to detect relatively blurry videos. Additionally, a set of video-based evaluation metrics based on a machine learning classifier was proposed, which reflected the quality of video detection effectively in the experiments. Experiments showed that our system with the custom backbone was more suitable for detection of the untrained rice videos than VGG16, ResNet-50, ResNet-101 backbone system and YOLOv3 with our experimental environment.
机译:对于那些粮食匮乏的地区来说,增加谷物产量至关重要。通过及时控制农作物病虫害来增加粮食产量是有效的。为了构建植物病虫害视频检测系统,并在将来构建实时的作物病虫害视频检测系统,提出了一种基于深度学习的视频检测架构,该架构具有定制的主干,用于检测植物病虫害。视频。我们首先将视频转换为静止帧,然后将其发送到静止图像检测器进行检测,最后将这些帧合成为视频。在静止图像检测器中,我们使用了更快的RCNN作为框架。我们使用图像训练模型来检测相对模糊的视频。另外,提出了一套基于机器学习分类器的基于视频的评估指标,在实验中有效地反映了视频检测的质量。实验表明,与带有实验环境的VGG16,ResNet-50,ResNet-101骨干系统和YOLOv3相比,带有自定义主干的系统更适合于检测未经训练的水稻视频。

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