Fruitylicious:基于水果图像的水果成熟度测定移动应用程序

N. Iswari, Wella, Ranny
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引用次数: 12

摘要

印尼本土水果产业发展程度很高,但竞争力不及进口水果。这个国家生产的水果种类非常多样化,但利用技术来支持生产和销售仍然没有得到广泛应用。这使得当地水果市场的竞争力低于进口水果,而进口水果在很大程度上采用了技术生产支持。在本研究中,我们分析了水果的数字图像与甜度的关系。所述图像处理方法用于制备准备在匹配阶段进行处理的数字图像。采用k -最近邻方法对数字水果图像的甜度进行匹配。甜度是用白利度单位来测量的。匹配结果可用于基于数字图像的水果成熟度预测,从而解决传统测量方法可能导致水果变质的问题。实验在几种水果上进行,包括:香蕉、苹果和甜瓜。每一张水果图像都是从几个不同的角度记录的。我们还用一种叫做折射计的甜度测量仪器来测量甜度。这两者都将成为分类系统的训练材料,然后使用kNN进行执行。本研究的结果方法在名为Fruitylicious的应用程序中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fruitylicious: Mobile application for fruit ripeness determination based on fruit image
Development of local fruit industry in Indonesia is very high, but less competitive than imported fruits. Produced fruit kinds in this country is very diverse, but the use of technology to support the production and distribution is still not widely applied. This makes the local fruit market less competitive than imported fruits that has largely been applying technology production support. In this research, we analyse the relationship between fruit digital image and sweetness level of it. Image processing method carried out to prepare a digital image that is ready to be processed in the matching stage. K-Nearest Neighbor method is used to match fruit digital image with its sweetness levels. Sweetness levels were measured using Brix degrees' units. Matching results would be useful to predict fruit ripeness based on digital image, so that the conventional measurement methods that should spoil the fruit can be handled. Experiments were performed in several types of fruits include: bananas, apples and melons. Each of these fruit image is recorded from several difference angles. We also measured levels of sweetness using a sweetness measuring instrument, called refractometer. Both of these will become the training materials for classification system and then performed using kNN. The resulting method of this research is implemented in the application, named Fruitylicious.
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