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使用机器学习算法对预处理实体进行稳健性综合征的感知探索。

Perception Exploration on Robustness Syndromes With Pre-processing Entities Using Machine Learning Algorithm.

机构信息

Department of Artificial Intelligence, G.H. Raisoni College of Engineering, Nagpur, India.

Department of Electronics and Communication Engineering, Panimalar Institute of Technology, Chennai, India.

出版信息

Front Public Health. 2022 Jun 16;10:893989. doi: 10.3389/fpubh.2022.893989. eCollection 2022.

Abstract

The majority of the current-generation individuals all around the world are dealing with a variety of health-related issues. The most common cause of health problems has been found as depression, which is caused by intellectual difficulties. However, most people are unable to recognize such occurrences in them, and no procedures for discriminating them from normal people have been created so far. Even some advanced technologies do not support distinct classes of individuals as language writing skills vary greatly across numerous places, making the central operations cumbersome. As a result, the primary goal of the proposed research is to create a unique model that can detect a variety of diseases in humans, thereby averting a high level of depression. A machine learning method known as the Convolutional Neural Network (CNN) model has been included into this evolutionary process for extracting numerous features in three distinct units. The CNN also detects early-stage problems since it accepts input in the form of writing and sketching, both of which are turned to images. Furthermore, with this sort of image emotion analysis, ordinary reactions may be easily differentiated, resulting in more accurate prediction results. The characteristics such as reference line, tilt, length, edge, constraint, alignment, separation, and sectors are analyzed to test the usefulness of CNN for recognizing abnormalities, and the extracted features provide an enhanced value of around 74%higher than the conventional models.

摘要

目前全球大多数人都面临着各种与健康相关的问题。最常见的健康问题原因是抑郁症,它是由智力困难引起的。然而,大多数人无法识别自己身上的这种情况,目前也没有区分他们和正常人的程序。即使一些先进的技术也无法支持不同的人群,因为语言写作技能在许多地方都有很大的差异,使得核心操作变得繁琐。因此,拟议研究的主要目标是创建一个独特的模型,能够检测人类的多种疾病,从而避免高度抑郁。卷积神经网络 (CNN) 模型等机器学习方法已被纳入这一演进过程中,用于在三个不同单元中提取众多特征。CNN 还可以检测早期问题,因为它接受书写和素描的输入,这两者都被转化为图像。此外,通过这种图像情感分析,可以轻松区分普通反应,从而得到更准确的预测结果。分析特征如参考线、倾斜度、长度、边缘、约束、对齐、分离和扇区,以测试 CNN 识别异常的有用性,提取的特征比传统模型提供了约 74%的增强价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f515/9243559/4c621af3d4d1/fpubh-10-893989-g0001.jpg

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