Leveraging YOLOv7 for Plant Disease Detection

S. Vaidya, Sameer Kavthekar, Amit D. Joshi
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引用次数: 1

Abstract

The agricultural sector contributes to 18.8% of India's Gross Domestic Product (GDP). With the increase in extreme climatic changes and constant deterioration of the quality of yield in the agricultural sector, detecting and treating plant diseases in their early stages is the need of the hour. At present, plant diseases are identified manually by examining them, which increases the time and decreases the efficiency and quality of the yield. This work focuses on providing a feasible solution to the problem of Plant Disease Detection. This work aims to develop a digital solution to this problem by training the fastest single-stage object detection model, YOLOv7, on the labeled PlantDoc Dataset. Since the PlantDoc dataset is small in size, data augmentation is performed. YOLOv7 achieves a significantly higher mean average precision of 71%. The size of the model is 75.1 MB, and the average time taken to detect an irregularity in an image is 6.8 ms. On account of the small size of the model and fast inference time, this model can be used for edge computing on devices such as satellites and drones to increase the yield produced.
利用YOLOv7进行植物病害检测
农业部门贡献了印度国内生产总值(GDP)的18.8%。随着极端气候变化的增加和农业部门产量质量的不断恶化,在早期阶段发现和治疗植物病害是当务之急。目前,植物病害的识别主要依靠人工检测,增加了时间,降低了产量的效率和质量。本工作的重点是为植物病害检测问题提供一个可行的解决方案。这项工作旨在通过在标记的PlantDoc数据集上训练最快的单阶段目标检测模型YOLOv7来开发这个问题的数字解决方案。由于PlantDoc数据集很小,因此需要执行数据扩充。YOLOv7的平均精度显著提高,达到71%。该模型的大小为75.1 MB,检测图像中的不规则性所需的平均时间为6.8 ms。由于模型体积小,推理时间快,该模型可用于卫星、无人机等设备的边缘计算,提高产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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