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A coarse-to-fine leaf detection approach based on leaf skeleton identification and joint segmentation

机译:一种基于叶骨架识别和联合分割的粗型叶片检测方法

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Plant leaf detection and segmentation are challenging tasks for in-situ plant image analysis. Here, a novel leaf detection scheme is proposed to detect individual leaves and accurately determine leaf shapes in natural scenes. A leaf skeleton-extraction method was developed by analysing local image features of skeleton pixels. Approximate positions of individual leaves were determined according to the main leaf skeleton. Sub-images containing only single target leaves were extracted from whole plant images according to position and size of the main skeleton. Accurate leaf analysis was conducted on the sub-images of individual leaves. Leaf direction was calculated by examining the structure of the main leaf skeleton. Joint segmentation by combining region and active shape model was presented to accurately elucidate leaf shape. Leaf detection was implemented using deep learning approach, Faster R-CNN. A plant leaf image dataset containing four types of leaf images of different complexity was built to evaluate detection algorithms. Plant leaves with occlusions and complex backgrounds were effectively detected and their shapes accurately determined. Detection accuracy of the proposed method was 81.10%-100%, and 86.75%-100% for Faster R-CNN. The method demonstrated a comparable detection ability to that of Faster R-CNN. Furthermore, the rates of success to determine leaf direction by our method ranged between 89.06% and 100%, while the average measurement difference was 1.29 degrees compared with manual measurement. The accuracy of shape measurement was 75.95%-100% for all types of plant images. Therefore, this method is accurate and stable for precise leaf measurements in agricultural applications. (C) 2021 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:植物叶检测和分割是对原位植物图像分析的具有挑战性的任务。这里,提出了一种新的叶片检测方案来检测单个叶子并准确地确定自然场景中的叶片形状。通过分析骨架像素的局部图像特征来开发叶片骨架提取方法。根据主叶骨架确定单个叶子的近似位置。仅根据主骨架的位置和尺寸从整个植物图像中提取仅包含单个靶叶的子图像。在个体叶片的子图像上进行精确的叶片分析。通过检查主叶骨架的结构来计算叶子方向。提出了通过组合区域和有源形状模型的关节分割,以精确地阐明叶形。使用深度学习方法实现叶片检测,更快R-CNN。构建了包含不同复杂性四种叶片图像的植物叶图像数据集以评估检测算法。有效地检测到植物叶和复杂背景,并精确地确定它们的形状。所提出的方法的检测精度为81.10%-100%,而R-CNN的速度为86.75%-100%。该方法证明了更快的R-CNN的检测能力。此外,通过我们方法确定叶片方向的成功率在89.06%和100%之间,而平均测量差与手动测量相比为1.29度。所有类型的植物图像的形状测量的准确性为75.95%-100%。因此,该方法对于农业应用中的精确叶测量来说是准确和稳定的。 (c)2021 IAGRE。 elsevier有限公司出版。保留所有权利。

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