Identifying Mango and Its Ripeness Using Image Processing and Machine Learning Approach

R. Patil, Somnath B. Thigale, S. Karve, Vaishnaw G. Kale
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Abstract

Fruit market is a subject of choice, thereby, a dealer needs to grade the fruit.  Fruit grading commercially available systems are very expensive, and manual fruit grading systems used in small businesses and dealers are prone to human error and inaccuracy. This paper proposes a system for identifying and grading Mango which will bebeneficial if we consider Industry 4.0. A Faster Region-based Convolutional Neural Network (Faster R-CNN) object detection algorithm using Tensor Flow has been implemented for identifying the fruit and by Image processing the probable percentage of ripeness can be determined. Thereby categorizing the fruit into classes. The results show that the proposed methods are efficient and cost-effective for determining and detecting the ripeness of fruits. The same system, when trained effectively can be used for multiple fruits.
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利用图像处理和机器学习方法识别芒果及其成熟度
水果市场是一个选择的对象,因此,一个经销商需要对水果进行分级。市面上的水果分级系统非常昂贵,小型企业和经销商使用的手动水果分级系统容易出现人为错误和不准确。本文提出了一个对芒果进行识别和分级的系统,这将有利于我们考虑工业4.0。利用张量流实现了一种更快的基于区域的卷积神经网络(Faster R-CNN)目标检测算法,用于识别水果,并通过图像处理确定可能的成熟百分比。从而将水果分类。结果表明,该方法是一种高效、经济的水果成熟度检测方法。同样的系统,当训练有效时,可以用于多种水果。
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