一种使用面部情绪技术进行抑郁症咨询的新型人工智能疗法

Daniel Nixon , Viswanatha Vanjre Mallappa , Vishwanath Petli , Sangamesh HosgurMath , Shashi Kiran K
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引用次数: 0

摘要

由于多种原因,在人生的不同阶段,世界上大多数人都面临着抑郁或压力。由于目前繁忙的生活周期,人们在日常生活中陷入压力,从而导致长期的抑郁。在教育活动、竞争性/挑战性任务、工作压力、家庭后果、不同类型的人际关系管理、健康障碍、老年等方面面临压力。本文提出了一种新的用于抑郁症分析的人工智能疗法。本研究有助于心理学家对患者进行心理咨询。基于机器学习的面部情绪技术被用于检测任何患者的抑郁程度。这个模型可以对任何年龄/类别的患者进行测试,这些患者由于任何类型的问题或不同的生活顺序而面临抑郁症。为了训练机器学习算法,使用fer2013开源数据集。对算法进行了良好的训练,并对不同年龄的人进行了实验。该算法的结果能够更有效地分析抑郁症。
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A novel AI therapy for depression counseling using face emotion techniques

Depression or stress is faced by most of the population throughout the world for multiple reasons and at different stages of life. Due to present busy life cycle, humans get into stress in their daily life, which leads to depression on long term. Stress is faced in education activity, competitive / challenging tasks, work pressure, family consequences, different types of human relation management, health disorders, old age etc. In this paper, a novel Artificial Intelligence therapy for depression analysis is proposed. This research is helpful for Psychologist to conduct counselling for their patients. Machine learning based Face Emotion techniques are used to detect depression level in any patient. This model can be tested for any age / category of patient, who faces depression due to any kind of problem or different sequences of life. To train machine learning algorithm, fer2013 open-source dataset is used. The algorithm was well trained and experiment were conducted on different age people. The results of this proposed algorithm were able to analyze depression more effectively.

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