A Discriminative Pest Detection Method Based on Low-Rank Representation

Yang Wang, Yong Zhang, Yunhui Shi, Baocai Yin
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Abstract

Traditional manual detection method of crop pests is a quite tedious work with low efficiency, which brings great inconvenience to the control and removal of crop pests at early stage. In recently years, computer vision becomes a critical and promising technique for pest detection. However, limited to the shape and size of the pest and other issues, the perforance of these methods are not so effective and accurate. In order to improve the detection accuracy, we propose a discriminative method for pest detection on leaves based on low-rank representation and sparsity. By utilizing the lowrank characteristics of natural images, the sparsity of the noise image and the prior knowledge of color information of the crop pest images, our method decomposes the original image into low-rank image and sparse noise image, which contains all pests on the leaf. After that, the crop pests with leaf can be separate from the background and counted effectively. The experimental results show that our method can detect pests on leaf conveniently. This is of great significance for future pest judgment and management.
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基于低秩表示的害虫判别检测方法
传统的农作物有害生物人工检测方法是一项相当繁琐、效率低下的工作,给作物有害生物的早期防治带来了极大的不便。近年来,计算机视觉已成为害虫检测的一项重要技术。然而,受限于害虫的形状和大小等问题,这些方法的性能都不那么有效和准确。为了提高检测精度,提出了一种基于低秩表示和稀疏度的叶片害虫判别检测方法。该方法利用自然图像的低秩特征、噪声图像的稀疏性和作物病虫害图像颜色信息的先验知识,将原始图像分解为包含所有叶片病虫害的低秩图像和稀疏噪声图像。这样可以将作物带叶害虫从背景中分离出来,有效地进行计数。实验结果表明,该方法可以方便地检测出叶片上的害虫。这对今后害虫的判断和治理具有重要意义。
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