An Effectual Sentiment Analysis for High Classification Rates Using Medical Image Processing

G. Jaitly, Manoj Kapil
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Abstract

Sentimental data is now a trend can be generally considered into two key types mainly facts and feelings. Facts are unbiased expressions around entities, actions, and their belongings. The thoughts of estimation in terms of sentiments are very extensive. In this paper, the main focus is given on the opinion terminologies that carry positive or negative thoughts. These thoughts are considered as sentiments. Plentiful work is done already using text processing in terms of mining of the information and recovery of the data. It is done using clustering approaches, mining of the text and other various text mining tasks but very less work is in handling of opinions in the medical field. Yet, sentiments are so imperative in the medical field to make decisions. The dataset on which the processing is done is the digital retinal DRIVE dataset was taken with 8-BPC (bits per color level) at 768 × 584 pixels. So this paper put light on the efficient approach for sentiment analysis using normalization and feature extraction for high classification rates and the simulation environment is used as MATLAB for development purpose.
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基于医学图像处理的高分类率情感分析
情感数据现在是一种趋势,一般可以分为两种关键类型,主要是事实和情感。事实是关于实体、行为及其财产的公正表达。情感评价的思想是非常广泛的。在本文中,主要关注的是带有积极或消极思想的意见术语。这些想法被认为是情感。在信息挖掘和数据恢复方面,使用文本处理已经做了大量的工作。它使用聚类方法、文本挖掘和其他各种文本挖掘任务来完成,但在医学领域处理意见的工作很少。然而,在医疗领域做出决定时,情感是如此重要。进行处理的数据集是数字视网膜DRIVE数据集,采用8-BPC(每个颜色级别的位),分辨率为768 × 584像素。因此,本文提出了一种基于归一化和特征提取的高效情感分析方法,并以MATLAB为仿真环境进行开发。
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