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Detection of Apple Lesions in Orchards Based on Deep Learning Methods of CycleGAN and YOLOV3-Dense

机译:基于Crycan和Yolov3密集的深度学习方法的果园苹果病变检测

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Plant disease is one of the primary causes of crop yield reduction. With the development of computer vision and deep learning technology, autonomous detection of plant surface lesion images collected by optical sensors has become an important research direction for timely crop disease diagnosis. In this paper, an anthracnose lesion detection method based on deep learning is proposed. Firstly, for the problem of insufficient image data caused by the random occurrence of apple diseases, in addition to traditional image augmentation techniques, Cycle-Consistent Adversarial Network (CycleGAN) deep learning model is used in this paper to accomplish data augmentation. These methods effectively enrich the diversity of training data and provide a solid foundation for training the detection model. In this paper, on the basis of image data augmentation, densely connected neural network (DenseNet) is utilized to optimize feature layers of the YOLO-V3 model which have lower resolution. DenseNet greatly improves the utilization of features in the neural network and enhances the detection result of the YOLO-V3 model. It is verified in experiments that the improved model exceeds Faster R-CNN with VGG16 NET, the original YOLO-V3 model, and other three state-of-the-art networks in detection performance, and it can realize real-time detection. The proposed method can be well applied to the detection of anthracnose lesions on apple surfaces in orchards.
机译:植物病是作物产量减少的主要原因之一。随着计算机视觉和深度学习技术的发展,光学传感器收集的植物表面病变图像的自主检测已成为及时作物疾病诊断的重要研究方向。本文提出了一种基于深度学习的炭疽病病变检测方法。首先,对于由苹果疾病的随机发生引起的图像数据的问题,除了传统的图像增强技术之外,本文还使用循环一致的对抗网络(Cyclegan)深学习模型来实现数据增强。这些方法有效丰富了培训数据的多样性,并为培训检测模型提供了坚实的基础。本文基于图像数据增强,利用密度连接的神经网络(DENSENET)来优化具有较低分辨率的YOLO-V3模型的特征层。 DENSENET大大提高了神经网络中特征的利用,增强了YOLO-V3模型的检测结果。在实验中验证,改进的模型超过了VGG16网,原始YOLO-V3模型等三个在检测性能中的其他三个最先进的网络,并且它可以实现实时检测。所提出的方法可以很好地应用于果园苹果表面上的炭疽病病变的检测。

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