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Dual Stage Image Analysis for a complex pattern classification task: Ham veining defect detection

机译:复杂模式分类任务的双级图像分析:火腿脉冲缺陷检测

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Veins in pork thigh carcass are directly related to the quality of dry-cured ham, and consequently to its market value. Some veining defects over the surface of raw ham are easily detected by humans and precisely assessed by a specialist. However, the automatic evaluation of raw ham quality by image analysis poses some challenges to the traditional Computer Vision Systems (CVS), many of them grounded on the complex image pattern related to each defect level. To improve the CVS classification performance without overburdening feature extraction, as well as the common machine learning modelling, we propose Dual Stage Image Analysis (DSIA). DSIA is an additional step in a CVS, that was built in two stages based on the "divide and conquer" strategy. The first stage consists of splitting the region of interest into sub-regions to predict the presence of veining. In the second stage, the algorithm computes the number of veining sub-regions to assess the final defect level classification. A total of 194 raw ham samples were used to evaluate the DSIA performance in the experiments. Support Vector Machine and Random Forest algorithms were compared for inducing the classification model using 92 image features. Random Forest model was the best, capable of predicting defect level with 88.10% accuracy using DSIA. Without DSIA, the CVS with RF achieved an accuracy of 63.10%. (C) 2020 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:猪肉大腿胴体的静脉与干腌火腿的质量直接相关,从而达到其市场价值。人类容易检测到原始火腿表面上的一些脉冲缺陷,并通过专家精确评估。然而,通过图像分析自动评估原始火腿质量对传统计算机视觉系统(CVS)的一些挑战构成了一些挑战,其中许多在与每个缺陷水平​​相关的复杂图像模式上接地。为了改善CVS分类性能而不覆载特征提取,以及共同机器学习建模,我们提出双级图像分析(DSIA)。 DSIA是CVS的额外步骤,该步骤是基于“鸿沟和征服”策略的两个阶段。第一阶段包括将感兴趣区域分成子区域以预测纱线的存在。在第二阶段,该算法计算脉冲子区域的数量以评估最终缺陷级别分类。共有194个原始火腿样本用于评估实验中的DSIA性能。使用92个图像特征对支持向量机和随机森林算法进行比较。随机森林模型是最好的,能够使用DSIA预测缺陷水平,精度为88.10%。没有DSIA,具有RF的CV达到63.10%的准确性。 (c)2020 IAGRE。 elsevier有限公司出版。保留所有权利。

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