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Computer Vision System Applied to Classification of Manila Mangoes During Ripening Process

机译:计算机视觉系统在马尼拉芒果成熟过程中的分类

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摘要

Mango is an important crop that is marketed on a large scale around the world. The degree of ripeness of mangoes is an important quality attribute that has traditionally been evaluated manually through their physicochemical properties and color parameters, but recent non-destructive technologies such as computer vision systems (CVS) are emerging to replace these destructive, slow, and costly methods by others that are faster and more reliable. In the present work, physicochemical properties and color parameters obtained using a CVS at laboratory level were linked to establish the ripening stages of mango cv. Manila. Classification process involving multivariate analysis was applied with the aim of using only color parameters to estimate levels of ripeness. A set of 117 mangoes was used to estimate the ripening index (RPI) from the physicochemical properties, and another set of 39 mangoes was used to validate the classification process in mangoes harvest in a different season. The RPI was useful for establishing three phases of maturation, namely: pre-climacteric, climacteric, and senescence. These showed correspondences with the color changes evaluated in two color spaces (CIELAB and HSB). Principal component analysis was efficient in selecting the most significant variables and separating the mangoes into the three ripening stages. Multivariate discriminant analysis made it possible to obtain classification rates of 90iu % by using only a*, b*, H and S color coordinates, the CIELAB system being, in general, more efficient at classification than HSB. The results obtained showed that CVS developed for the study can be used as a useful non-invasive, efficient method for the evaluation of the ripeness of mangoes.
机译:芒果是一种重要的农作物,在世界范围内都有大量销售。芒果的成熟度是重要的品质属性,传统上是通过其理化特性和颜色参数手动评估的,但是最近出现的无损技术(例如计算机视觉系统(CVS))正在取代这些损毁,缓慢且昂贵的技术更快,更可靠的方法。在目前的工作中,将在实验室水平使用CVS获得的理化特性和颜色参数联系起来,以确定芒果cv的成熟阶段。马尼拉。应用了涉及多元分析的分类过程,目的是仅使用颜色参数来估计成熟度。一组117芒果用于从理化特性评估成熟指数(RPI),另一组39芒果用于验证不同季节收获的芒果的分类过程。 RPI对于建立三个成熟阶段非常有用,即:更年期前,更年期和衰老。这些显示出与在两个颜色空间(CIELAB和HSB)中评估的颜色变化相对应。主成分分析可以有效地选择最重要的变量并将芒果分为三个成熟阶段。多变量判别分析使得仅使用a *,b *,H和S颜色坐标即可获得90iu%的分类率,而CIELAB系统通常比HSB更有效地进行分类。获得的结果表明,为该研究开发的CVS可以用作评估芒果成熟度的有用的非侵入性,有效方法。

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