植物叶片识别的分层方法

Jyotismita Chaki, R. Parekh, S. Bhattacharya
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引用次数: 7

摘要

目前的工作提出了一种利用多种视觉特征从数字叶片图像中识别植物的方法来处理异质植物类型。认识到植物叶片可以具有多种可识别特征,如颜色(绿色和非绿色),形状(简单和复合)和纹理(脉结构模式),单一的特征集可能不足以有效地完全识别异质植物类型。因此,提出了一种分层体系结构,其中每一层使用自己的一组特征来处理特定类型的视觉特征,以创建自定义的数据模型。随后,来自各个层的特征被馈送到一系列自定义分类器中,以获得更强的识别能力。在这个作品中,我们只列举了颜色和形状层。数据集涉及600张树叶图像,分为30类,包括绿色、非绿色、简单和复叶,用于测试该方法的性能和有效性。
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Plant leaf recognition using a layered approach
The current work proposes an approach for the recognition of plants from their digital leaf images using multiple visual features to handle heterogeneous plant types. Recognizing the fact that plant leaves can have a variety of recognizable features like color (green and non-green) and shape (simple and compound) and texture (vein structure patterns), a single set of features may not be efficient enough for complete recognition of heterogeneous plant types. Accordingly a layered architecture is proposed where each layer handles a specific type of visual characteristics using its own set of features to create a customized data model. Features from various layers are subsequently fed to an array of custom classifiers for a more robust recognition. In this work we enumerate on the color and shape layers only. A dataset involving 600 leaf images divided over 30 classes and including green, non-green, simple and compound leaves, is used to test the performance and effectiveness of the approach.
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