Tomato Ripeness Detection Using Linear Discriminant Analysis Algorithm with CIELAB and HSV Color Spaces

Rini Nuraini, Teotino Gomes Soares, Popi Dayurni, Mulyadi Mulyadi
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Abstract

Tomatoes have a relatively short ripening period, making it essential to identify their ripeness level before distribution. The ripeness level of tomatoes can be detected based on their color. Therefore, the color of tomatoes serves as a crucial indicator in determining whether they are ripe and of good quality. However, classifying tomato ripeness levels manually has several drawbacks, namely requiring a long process, a low level of accuracy, and being inconsistent. The research aimed at developing a detection model for the ripeness level of tomatoes using the LDA algorithm based on color feature extraction, namely CIELAB (L*a*b) and HSV. The L*a*b and HSV color spaces are applied to obtain information about the color of the object being detected. Furthermore, the information obtained from feature extraction is then grouped by class using the LDA algorithm, which separates information for each class and limits the spread between classes through linear projection searches to maximize the covariance matrix between classes so that members within the class can be identified. This research produces a model that can detect the level of ripeness of tomatoes with an accuracy of 88.194%.
基于CIELAB和HSV色彩空间的番茄成熟度线性判别分析算法
番茄的成熟期相对较短,因此在分销前确定其成熟程度至关重要。番茄的成熟度可以根据颜色来判断。因此,西红柿的颜色是决定它们是否成熟和质量好坏的关键指标。然而,手工分类番茄成熟度有几个缺点,即需要一个漫长的过程,低水平的准确性和不一致。本研究旨在利用基于颜色特征提取的LDA算法开发番茄成熟度检测模型,即CIELAB (L*a*b)和HSV。L*a*b和HSV颜色空间用于获取被检测物体的颜色信息。然后,利用LDA算法将特征提取得到的信息按类分组,通过线性投影搜索分离每一类信息,限制类之间的传播,最大化类之间的协方差矩阵,从而识别出类内的成员。这项研究产生了一个可以检测西红柿成熟度的模型,准确率为88.194%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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