Xiang Ying, Yao Jia, Yang Yiyu, Yao Kaikai, Wu Cuiping, Yue Xiaobin, Li Zhenghao, Ma Miaomiao, Zhang Jie, Gong Guoshu
College of Information Engineering, Sichuan Agricultural University, Ya'an 625000, China.
Sichuan Key Laboratory of Agricultural Information Engineering, Ya'an 625000, China.
Plants (Basel). 2023 Aug 25;12(17):3053. doi: 10.3390/plants12173053.
Disease diagnosis and control play important roles in agriculture and crop protection. Traditional methods of identifying plant disease rely primarily on human vision and manual inspection, which are subjective, have low accuracy, and make it difficult to estimate the situation in real time. At present, an intelligent detection technology based on computer vision is becoming an increasingly important tool used to monitor and control crop disease. However, the use of this technology often requires the collection of a substantial amount of specialized data in advance. Due to the seasonality and uncertainty of many crop pathogeneses, as well as some rare diseases or rare species, such data requirements are difficult to meet, leading to difficulties in achieving high levels of detection accuracy. Here, we use kiwifruit trunk bacterial canker ( pv. ) as an example and propose a high-precision detection method to address the issue mentioned above. We introduce a lightweight and efficient image generative model capable of generating realistic and diverse images of kiwifruit trunk disease and expanding the original dataset. We also utilize the YOLOv8 model to perform disease detection; this model demonstrates real-time detection capability, taking only 0.01 s per image. The specific contributions of this study are as follows: (1) a depth-wise separable convolution is utilized to replace part of ordinary convolutions and introduce noise to improve the diversity of the generated images; (2) we propose the GASLE module by embedding a GAM, adjust the importance of different channels, and reduce the loss of spatial information; (3) we use an AdaMod optimizer to increase the convergence of the network; and (4) we select a real-time YOLOv8 model to perform effect verification. The results of this experiment show that the Fréchet Inception Distance (FID) of the proposed generative model reaches 84.18, having a decrease of 41.23 compared to FastGAN and a decrease of 2.1 compared to ProjectedGAN. The mean Average Precision (mAP@0.5) on the YOLOv8 network reaches 87.17%, which is nearly 17% higher than that of the original algorithm. These results substantiate the effectiveness of our generative model, providing a robust strategy for image generation and disease detection in plant kingdoms.
病害诊断与防治在农业和作物保护中发挥着重要作用。传统的植物病害识别方法主要依靠人工肉眼观察和手动检查,这些方法具有主观性、准确率低且难以实时评估病情等问题。目前,基于计算机视觉的智能检测技术正逐渐成为监测和控制作物病害的重要工具。然而,使用该技术通常需要提前收集大量的专业数据。由于许多作物发病具有季节性和不确定性,以及一些罕见病害或珍稀物种的存在,这种数据需求难以满足,导致难以实现高精度的检测。在此,我们以猕猴桃树干细菌性溃疡病(pv.)为例,提出一种高精度检测方法来解决上述问题。我们引入了一种轻量级且高效的图像生成模型,该模型能够生成逼真且多样的猕猴桃树干病害图像,并扩充原始数据集。我们还利用YOLOv8模型进行病害检测;该模型具有实时检测能力,每张图像仅需0.01秒。本研究的具体贡献如下:(1)利用深度可分离卷积替换部分普通卷积并引入噪声,以提高生成图像的多样性;(2)通过嵌入GAM提出GASLE模块,调整不同通道的重要性,并减少空间信息损失;(3)使用AdaMod优化器提高网络的收敛性;(4)选择实时的YOLOv8模型进行效果验证实验结果表明,所提出的生成模型的弗雷歇因袭距离(FID)达到84.18,与FastGAN相比降低了41.23,与ProjectedGAN相比降低了2.1。在YOLOv8网络上的平均精度均值(mAP@0.5)达到87.17%,比原算法高出近17%。这些结果证实了我们生成模型的有效性,为植物王国中的图像生成和病害检测提供了一种可靠的策略。