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Leaf-based plant species recognition based on improved local binary pattern and extreme learning machine

机译:基于改进的地方二元图案和极端学习机的叶子植物物种识别

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摘要

Over the past 15 years, many feature extraction methods have been used and developed for the recognition of plant species. These methods have mostly been performed using separation operations from the background based on a pre-processing stage. However, the Local Binary Patterns (LBP) method, which provides high performance in object recognition, is used to obtain textural features from images without need for a pre-processing stage. In this paper, we propose different approaches based on LBP for the recognition of plant leaves using extracted texture features from plant leaves. While the original LBP converts color images to gray tones, the proposed methods are applied by using the R and G color channel of images. In addition, we evaluate the robustness of the proposed methods against noise such as salt & pepper and Gaussian. Later, the obtained features from the proposed methods were classified and tested using the Extreme Learning Machine (ELM) method. The experimental works were performed using various plant leaf datasets such as Flavia, Swedish, ICL, and Foliage. According to the obtained performance results, the calculated accuracy values for Flavia, Swedish, ICL and Foliage datasets were 98.94%, 99.46%, 83.71%, and 92.92%, respectively. The results demonstrate that the proposed method was more successful when compared to the original LBP, improved LBP methods, and other image descriptors for both noisy and noiseless images. (C) 2019 Elsevier B.V. All rights reserved
机译:在过去的15年中,已经使用了许多特征提取方法并开发了植物物种的识别。这些方法主要使用基于预处理阶段的背景的分离操作来执行。然而,在对象识别中提供高性能的局部二进制模式(LBP)方法用于从图像中获得图像的纹理特征,而无需预处理阶段。在本文中,我们提出了基于LBP的不同方法,用于植物叶中提取的纹理特征识别植物叶子。虽然原始LBP将彩色图像转换为灰色音调,但是通过使用图像的R和G颜色通道来应用所提出的方法。此外,我们评估了诸如盐和胡椒和高斯等噪声的鲁棒性。后来,使用极端学习机(ELM)方法对所得方法的所得功能进行分类和测试。使用各种植物叶数据集进行实验工程,例如Flavia,瑞典语,ICL和叶子。根据所获得的绩效结果,分别计算的黄斑,瑞典语,ICL和叶子数据集的计算精度值分别为98.94%,99.46%,83.71%和92.92%。结果表明,与原始LBP,改进的LBP方法和其他图像描述符相比,所提出的方法更成功,以及用于噪声和无噪声图像的其他图像描述。 (c)2019 Elsevier B.v.保留所有权利

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