基于机器学习的手写情绪状态检测模型

Khadija Nadeem, Mudassar Ahmad, Muhammad Asif Habib
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引用次数: 0

摘要

笔迹分析是一种多层次的情感检测方法。每个人的笔迹都是不同的,代表着我们当时的想法、感觉和行为。一个人的情绪是通过他的笔迹表达出来的,无论是高兴还是悲伤,兴奋,愤怒还是沮丧。在写作的过程中,我们把自己的感受传递到纸上,我们写作的方式象征着这些情感。情感检测是人机交互研究的一个重要领域。研究人员已经做了大量的工作来从视觉和听觉数据中检测情感,但从手写数据中识别情感仍然是一个新的活跃的研究课题。大多数情况下,对情绪识别的研究只关注三种基本情绪:焦虑、压力和抑郁。本研究的主要目的是通过笔迹来检测写作者的情绪,从而判断写作者的心理状态,识别出那些情绪不安或悲伤,需要心理帮助来克服负面情绪的人,并分析不同情绪状态下笔迹模式的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotional States Detection Model from Handwriting by using Machine Learning
Handwriting analysis is a multi-level approach for detecting emotion. Every person’s handwriting is different, representing how we think, feel, and act at that time. A person’s emotion is expressed in his handwriting, whether happy or sad, excited, angry, or depressed. We transmit our feelings to paper during the writing process and the way we write symbolizes those emotions. Emotion detection is an important area of study in human-computer interaction. Researchers have done a substantial amount of work to detect emotion from visual and auditory data but recognizing emotions from handwritten data is still a new and active study topic. Mostly, studies on emotion recognition focus on only 3 basic emotions: anxiety, stress, and depression. The main objective of this research is to detect the writer’s emotions from his or her handwriting, so to determine the writer’s mental state and identify those who are emotionally disturbed or sad and require mental help to overcome negative feelings and analyze the changes in handwriting patterns in different emotional states.
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