质地特征在面包可食性预测中的应用

R. Kavitha, D. Nandini, D. Guru, G. Parvathi
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引用次数: 0

摘要

面包的质量取决于原料的选择和烘焙过程。一旦面包被烘烤出来出售,可食用性可以通过几个因素来检验,如霉菌形成、难闻的气味、奇怪的味道和坚硬的质地。在这些因素中,模具形成和硬纹理可以通过视觉外观来捕捉。本文提出了一种利用纹理特征描述符构建分类器来预测面包可食性的方法。利用局部二值模式的变体进行特征提取,并对其性能进行了分析。实验表明,在587张面包图像样本的数据集上,对比色局部二值模式与随机森林分类器配合使用,准确率达到90.68%。在这项工作中解决的问题是机器学习领域的第一个问题,因此有望开启新的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Texture Features in Prediction of Bread Edibility
The quality of the bread depends on the selection of raw ingredients and baking process. Once the bread is baked and out for selling, the edibility can be inspected using few factors as mold formation, unpleasant odor, strange taste, and hard texture. Amongst these factors, mold formation and hard texture can be captured through visual appearance. In this study, an approach is proposed to predict the edibility of bread by building a classifier utilizing texture-based feature descriptors. Also, variants of Local Binary Pattern are used for feature extraction and the performance is analyzed. It is observed from the experimentation that Opposite Color Local Binary Pattern performs well along with Random Forest Classifier with an accuracy of 90.68% on a dataset of 587 samples of bread images. The problem being addressed in this work is first of its kind with a domain of machine learning and hence is expected to open new challenges to be addressed.
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