PlantDoc:植物病害视觉检测数据集

D. Singh, Naman Jain, Pranjali Jain, Pratik Kayal, Sudhakar Kumawat, Nipun Batra
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引用次数: 185

摘要

由于植物病害,印度每年损失35%的作物产量。由于缺乏实验室基础设施和专业知识,早期发现植物病害仍然很困难。在本文中,我们探索了计算机视觉方法用于可扩展和早期植物病害检测的可能性。缺乏足够大规模的非实验室数据集的可用性仍然是实现基于视觉的植物病害检测的主要挑战。在此背景下,我们提出了PlantDoc:一个视觉植物病害检测数据集。我们的数据集包含13种植物物种和多达17类疾病的2,598个数据点,涉及大约300个小时的人工注释互联网抓取图像。为了展示我们数据集的有效性,我们学习了3个模型来完成植物病害分类的任务。我们的结果表明,使用我们的数据集建模可以将分类精度提高31%。我们相信我们的数据集可以帮助减少计算机视觉技术在植物病害检测中的进入障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PlantDoc: A Dataset for Visual Plant Disease Detection
India loses 35% of the annual crop yield due to plant diseases. Early detection of plant diseases remains difficult due to the lack of lab infrastructure and expertise. In this paper, we explore the possibility of computer vision approaches for scalable and early plant disease detection. The lack of availability of sufficiently large-scale non-lab data set remains a major challenge for enabling vision based plant disease detection. Against this background, we present PlantDoc: a dataset for visual plant disease detection. Our dataset contains 2,598 data points in total across 13 plant species and up to 17 classes of diseases, involving approximately 300 human hours of effort in annotating internet scraped images. To show the efficacy of our dataset, we learn 3 models for the task of plant disease classification. Our results show that modelling using our dataset can increase the classification accuracy by up to 31%. We believe that our dataset can help reduce the entry barrier of computer vision techniques in plant disease detection.
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