PLRSNet: a semantic segmentation network for segmenting plant leaf region under complex background

Srinivasarao Talasila, K. Rawal, G. Sethi
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引用次数: 4

Abstract

PurposeExtraction of leaf region from the plant leaf images is a prerequisite process for species recognition, disease detection and classification and so on, which are required for crop management. Several approaches were developed to implement the process of leaf region segmentation from the background. However, most of the methods were applied to the images taken under laboratory setups or plain background, but the application of leaf segmentation methods is vital to be used on real-time cultivation field images that contain complex backgrounds. So far, the efficient method that automatically segments leaf region from the complex background exclusively for black gram plant leaf images has not been developed.Design/methodology/approachExtracting leaf regions from the complex background is cumbersome, and the proposed PLRSNet (Plant Leaf Region Segmentation Net) is one of the solutions to this problem. In this paper, a customized deep network is designed and applied to extract leaf regions from the images taken from cultivation fields.FindingsThe proposed PLRSNet compared with the state-of-the-art methods and the experimental results evident that proposed PLRSNet yields 96.9% of Similarity Index/Dice, 94.2% of Jaccard/IoU, 98.55% of Correct Detection Ratio, Total Segmentation Error of 0.059 and Average Surface Distance of 3.037, representing a significant improvement over existing methods particularly taking into account of cultivation field images.Originality/valueIn this work, a customized deep learning network is designed for segmenting plant leaf region under complex background and named it as a PLRSNet.
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PLRSNet:一种用于复杂背景下植物叶片区域分割的语义分割网络
目的从植物叶片图像中提取叶片区域是作物管理所需的物种识别、病害检测和分类等工作的前提。开发了几种方法来实现从背景进行叶区域分割的过程。然而,大多数方法都应用于在实验室设置或平原背景下拍摄的图像,但叶分割方法的应用对于在包含复杂背景的实时栽培田图像上使用至关重要。到目前为止,还没有开发出专门针对黑克植物叶片图像从复杂背景中自动分割叶片区域的有效方法。设计/方法/途径从复杂背景中提取叶区是一项繁琐的工作,所提出的PLRSNet(植物叶区分割网)就是解决这一问题的方法之一。本文设计并应用了一种定制的深度网络,从农田拍摄的图像中提取叶片区域。发现所提出的PLRSNet与最先进的方法进行了比较,实验结果表明,所提出的PLLSNet的相似度指数/Dice为96.9%,Jaccard/IoU为94.2%,正确检测率为98.55%,总分割误差为0.059,平均表面距离为3.037,代表了对现有方法的显著改进,特别是考虑到栽培田地图像。独创性/价值在这项工作中,设计了一个定制的深度学习网络,用于在复杂背景下分割植物叶片区域,并将其命名为PLRSNet。
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CiteScore
3.50
自引率
0.00%
发文量
21
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