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首页> 外文期刊>Electronic Letters on Computer Vision and Image Analysis: ELCVIA >Automatic Date Fruit Recognition Using Outlier Detection Techniques and Gaussian Mixture Models
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Automatic Date Fruit Recognition Using Outlier Detection Techniques and Gaussian Mixture Models

机译:使用异常检测技术和高斯混合模型自动日期果实识别

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摘要

In this paper, we propose a method for automatically recognizing different date varieties. The presence of outlier?samples could significantly degrade the recognition outcomes. Therefore, we separately prune samples of each variety from outliers using the Pruning Local Distance-based Outlier Factor (PLDOF) method. Samples of the same variety could have several visual appearances because of the noticeable variation in terms of their visual characteristics. Thus, in order to take this intra-variation into account, we model each variety with a Gaussian Mixture Model (GMM), where each component within the GMM corresponds to one visual appearance. Expectation-Maximization (EM) algorithm was used for parameters estimation and Davies-Bouldin index was used to automatically and precisely estimate the number of components (i.e., appearances). Compared to the related studies, the proposed method 1) is capable to recognize samples though the noticeable variation, in terms of maturity stage and hardness degree, within some varieties; 2) achieves a high recognition rate in spite of the presence of outlier samples; 3) is capable to distinguish between the highly confusing varieties; 4) is fully automatic, as it does not require neither physical measurements nor human assistance. For testing purposes, we introduce a new benchmark which includes the highest number of varieties (11) compared to the previous studies. Experiments show that our method has significantly outperformed several methods, where a high recognition rate of 97.8% has been reached.
机译:在本文中,我们提出了一种自动识别不同日期品种的方法。异常值?样品可以显着降低识别结果。因此,我们使用普通的局部距离的异常因子(PLDOF)方法分别从异常值与异常值分开修剪样本。由于它们的视觉特性方面的显着变化,相同变化的样本可能具有几个视野。因此,为了考虑这种内部变化,我们使用高斯混合模型(GMM)来模拟各种各种,其中GMM内的每个组件对应于一个可视外观。期望 - 最大化(EM)算法用于参数估计,并且Davies-Bouldin指数用于自动,精确地估计组件数量(即,出现)。与相关研究相比,所提出的方法1)能够在某些品种内的成熟阶段和硬度程度方面识别出现明显的变化; 2)尽管存在异常样品,但仍然实现了高识别率; 3)能够区分高度令人困惑的品种; 4)是全自动的,因为它不需要身体测量和人类的帮助。出于测试目的,我们介绍了一个新的基准,与之前的研究相比,包括最多的品种(11)。实验表明,我们的方法显着优于几种方法,其中达到了97.8%的高识别率。

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