农产品图像处理与分类技术及大豆工业样本质量评价系统建模研究综述

Sachin Sonawane, M. Awasthy, N. Choubey
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引用次数: 1

摘要

大豆是世界上最受人喜爱的食物。它在所有国家都很容易买到。因为富含蛋白质,所以推荐在日常食物中食用。以大豆为原料,可制成多种供人类和动物食用的增值食品,包括豆浆、豆油、豆类等。大豆产量占主要份额的国家是美国、巴西、阿根廷、中国和印度。在国际食品市场上,大豆的质量是食品工业生产优质第三产品的重要保证。为了简化贸易过程,美国、加拿大等国向买家推荐了大豆质量分级的某些标准和标准。因此,大豆质量的测量是必不可少的,也是在今天的情况下保护买家免受不合格产品影响的同样重要的要求。因此,如果大豆质量评估是人工完成的,那么测量误差的机会是很大的,如果是在训练有素的自动机器的帮助下完成的,那么误差的机会将是最小的。在这些方面,本研究工作的方向是大豆样品[3]质量测量自动化系统的建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Literature Review on Image Processing and Classification Techniques for Agriculture Produce and Modeling of Quality Assessment system for Soybean industry Sample
Soybean is the most admired and favored food in the world. It is readily available in all the countries. Because of richness in protein, it is recommended and consumed in the daily food. Variety of valueadded edible products can be prepared from Soybean including Soya-Milk, Oil, Pulses etc. for human as well as animals. The countries having major share in Soybean production are United States, Brazil, Argentina, China and India [1]. In international food market, the quality of Soybean is a major concerning order to assure the production of best tertiary product by food industry. To ease the trading process the countries like US, Canada have recommended certain criteria and standards to buyers for grading Soybean quality. Thus, the measurement of Soybean quality is essential as well as an equally important requirement in today‟s scenario to protect the buyers from substandard produce [2]. Accordingly, if the Soybean quality assessment is done manually then the chance of error in measurement is significant and in case it is done with the help of a perfectly trained automatic machine then the chance of error would be minimum. On these aspects, this research work is directed towards the modeling of an automated system for the quality measurements of Soybean Sample [3].
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