An image retrieval system for tomato disease assessment

Douglas Baquero, Juan F. Molina, R. Gil, C. Bojacá, Hugo Franco, Francisco Gomez
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引用次数: 12

Abstract

Tomato represents an important vegetable crop worldwide. During cropping cycle several diseases and abnormal conditions may affect tomato plants resulting on considerable losses of production. A precise identification of these pathologies in early phases is fundamental for the implementation of control strategies. Nevertheless, the right identification of symptoms of plants diseases require highly specialized knowledge and facilities, which are not available for small growers. Recently, computer vision tools have been proposed as an alternative for tomato diseases characterization. These works mainly focus on identification of affected regions and classification tasks. Nevertheless, non-specialists may lack of clarity about what they are looking for during the assessment. In these cases, Content Based Image Retrieval (CBIR) systems can be helpful as a complementary strategy to improve the quality of the search by allowing exploration of databases with supplementary information. This work presents a novel strategy for image retrieval of tomato leaves for greenhouse crops suitable to support disease diagnosis. The strategy is based on color structure descriptors and nearest neighbors. Experimental results show that the proposed approach can successfully characterize in several abnormal conditions, such as, chlorosis, sooty moulds and early blight.
番茄病害评估图像检索系统
番茄是世界上重要的蔬菜作物。在种植周期中,一些病害和异常条件会影响番茄植株,造成相当大的生产损失。在早期阶段准确识别这些病理是实施控制策略的基础。然而,正确识别植物病害的症状需要高度专业化的知识和设施,这是小型种植者所不具备的。最近,计算机视觉工具被提出作为番茄疾病表征的替代方法。这些工作主要集中在识别受影响区域和分类任务上。然而,非专业人士可能不清楚他们在评估过程中寻找的是什么。在这些情况下,基于内容的图像检索(CBIR)系统可以作为一种补充策略,通过允许使用补充信息探索数据库来提高搜索质量。本文提出了一种适合于支持病害诊断的温室作物番茄叶片图像检索的新策略。该策略基于颜色结构描述符和最近邻。实验结果表明,该方法可以成功地对黄萎病、烟霉病和早疫病等多种异常情况进行表征。
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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