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Comparative study of leaf image recognition with a novel learning-based approach

机译:基于新型学习方法的叶片图像识别比较研究

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Automatic plant identification via computer vision techniques has been greatly important for a number of professionals, such as environmental protectors, land managers, and foresters. In this paper, we conduct a comparative study on leaf image recognition and propose a novel learning-based leaf image recognition technique via sparse representation (or sparse coding) for automatic plant identification. In our learning-based method, in order to model leaf images, we learn an overcomplete dictionary for sparsely representing the training images of each leaf species. Each dictionary is learned using a set of descriptors extracted from the training images in such a way that each descriptor is represented by linear combination of a small number of dictionary atoms. Moreover, we also implement a general bag-of-words (BoW) model-based recognition system for leaf images, used for comparison. We experimentally compare the two approaches and show unique characteristics of our sparse coding-based framework. As a result, efficient leaf recognition can be achieved on public leaf image dataset based on the two evaluated methods, where the proposed sparse coding-based framework can perform better.
机译:通过计算机视觉技术自动植物识别对于许多人的专业人士来说,如环保保护者,土地管理人员和林业,这一直非常重要。在本文中,我们对叶片图像识别进行比较研究,并通过稀疏表示(或稀疏编码)来提出一种新的学习叶片图像识别技术,用于自动工厂识别。在我们基于学习的方法中,为了模拟叶片图像,我们学习过度计算的字典,以稀疏地代表每种叶子种的训练图像。使用从训练图像中提取的一组描述符来学习每个字典,以这样的方式,即每个描述符由少量字典原子的线性组合表示。此外,我们还实现了一种用于比较的叶片图像的一般文字(弓)模型的识别系统。我们通过实验比较这两种方法并显示了我们稀疏的基于编码框架的独特特征。结果,可以基于两个评估方法在公共叶图像数据集上实现有效的叶片识别,其中所提出的基于稀疏编码的框架可以更好地执行。

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