基于轮廓特征的花粉分类

C. Travieso, J. Briceño, J. R. Ticay-Rivas, J. B. Alonso
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引用次数: 27

摘要

为子孙后代保护地球的生物多样性是一项基本的全球性任务,其中通过计算机视觉自动识别花粉物种是一个高度优先考虑的问题。这项工作的重点是分析和分类阶段。轮廓的形态细节被认为是花粉粒的鉴别特征。该方法是一种基于HMM核的鲁棒花粉识别方法。使用向量支持机作为分类器。在使用HMM方面,这项工作的主要贡献是支持向量机中的梯度优化问题实现。共分类了47种热带蜜植物,平均成功率为93.8%±1.43。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pollen classification based on contour features
Conserving earth's biodiversity for future generations is a fundamental global task, where automated recognition of pollen species by means of computer vision represents a highly prioritized issue. This work focuses on analysis and classification stages. The morphological details of the contour are proposed as pollen grains discriminative features. The approach has been developed as a robust pollen identification based on an HMM kernel. A Vector Support Machine was used as classifier. The principal contribution in this work, in terms of the use of the HMM is the gradient optimisation problem implementation in the SVM. 47 tropical honey plant species have been classified achieving a mean of 93.8% ± 1.43 of success.
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