Inspecting rice seed species purity on a large dataset using geometrical and morphological features

Hai Vu, Van Ngoc Duong, Thuy Thi Nguyen
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引用次数: 3

Abstract

Although there is a great interest in developing automatical machines for classifying rice seed varieties, it is still unclear if differences in performance of existing techniques come from better feature descriptors or if this is due to varying inter-class or intra-class among the examined species. In this paper, we present a novel method for inspecting purity of rice seed species from the largest number of rice species dataset. The proposed method is conducted utilizing both morphological and geometrical features extracted from high resolution RGB images. Particularly, we take into account relevant pre-processing techniques so that the collected seeds are normalized by their biological structure. As a consequent, the geometrical features at local part of a seed can measured precisely. In addition, whereas existing methods include a limitation number (or a few) of examined species, we construct a dataset a much larger number of species. Because of a sufficient number of species, we can analyze the dependence of a classification performance on similarities of species (or their distinguishable), or types of the extracted features. In the evaluations, we confirm that both morphological features and geometrical features are informative. Combinations of them achieve the highest performances. Extensive evaluations on several schemes of different classifiers as well as several sub-datasets which consist of varying similarity of species are taken into account. These evaluations confirm stability and feasibility of the proposed method.
利用几何和形态特征在大数据集上检测水稻种子物种纯度
尽管人们对开发用于水稻种子品种分类的自动机器很感兴趣,但尚不清楚现有技术的性能差异是来自更好的特征描述符,还是由于所研究物种之间的类间或类内差异。在本文中,我们提出了一种从最大量的水稻物种数据集中检测水稻种子物种纯度的新方法。该方法利用从高分辨率RGB图像中提取的形态和几何特征进行。特别是,我们考虑到相关的预处理技术,使收集的种子按其生物结构进行规范化。因此,可以精确地测量种子局部的几何特征。此外,尽管现有的方法只包含有限数量(或少数)的被检查物种,但我们构建了一个物种数量大得多的数据集。由于物种数量足够多,我们可以分析分类性能对物种相似性(或其可区分性)或提取特征类型的依赖性。在评估中,我们确认形态特征和几何特征都是信息丰富的。它们的组合可以达到最高的性能。对不同分类器的几种方案以及由不同物种相似度组成的几个子数据集进行了广泛的评估。这些评价证实了所提方法的稳定性和可行性。
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