基于Logistic支持向量回归的水果分类自动分离机器学习

V. Ghodke, S. S. Pungaiah, M. Shamout, A. A. Sundarraj, Moidul Islam Judder, S. Vijayprasath
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摘要

在农业中,自动化是改善和提高产品质量、扩展和效率的重要属性。随着产品分类的提高,评级的质量有所降低。分拣是行业中最重要的挑战之一,因此需要一个可靠的分离系统,使我们能够轻松、自动地包装我们的产品。在这个过程中使用的特征包括预处理、输入、划分、提取、分类和检测。现有的方法不能准确地找到结果,并且需要花费更多的时间来寻找分离部分。针对这一问题,本文提出了Logistic支持向量回归(LSVR)对水果图像进行有效分类的方法。首先开始的过程包括图像数据集,第一步是预处理。在这个阶段,去除图像中不需要的区域,检查不平衡值,消除图像缺陷。下一步分割图像形成预处理滤波图像的阶段,它有助于分割图像。根据图像权重提取特征并进行评价进行分类。然后使用训练和测试图像进行分类,包括分离或识别颜色、纹理、形状和缺陷。最后,使用LSVR过程进行分类可以提高图像质量,并有助于行业分离产品。在自动化包装过程中使用图像比以往任何时候都更好地提高了结果的质量。使用这种方法和智能物流来跟踪交易过程。这项工作的主要目的是尽量减少或消除浪费。
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Machine Learning for Auto Segregation of Fruits Classification Based Logistic Support Vector Regression
In agriculture, automation is an important attribute for improving and enhancing the quality, expansion and efficiency of the products produced. The quality of the rating has been reduced as the product classification has improved. Sorting is one of the most important challenges in the industry, so need a reliable segregation system that allows us to package our products easily and automatically. Features used in this process include pre-processing, entry, division, extraction, classification, and detection. Existing approaches is not accurately finding the fruit result and take more time take to finding the segregation part. To overcome the issue in this work proposed the method Logistic Support Vector Regression (LSVR) is efficient classified the fruits images. Initially start the process include the image dataset, and first step is preprocessing. In this stage, remove unwanted areas of images, to check the imbalanced values and eliminating the image defects. Next step segmenting the images form the stage of preproceeing filtered images, it helps to splitting the images. Extracting the features based on the images weightages and evaluating for classification. Then using the training and testing images for classification, it includes segregating or identifying color, texture, shape, and defects. Finally, classification using LSVR process improves images quality and assists the industry in segregating products. The use of images in the automated packaging process improves the quality of the results in a better way than ever before. Use this approach and smart logistics to keep track of the transaction process. The purpose of this work is primarily to minimize or eliminate waste.
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