基于Mini-Xception CNN和人脸识别的音乐推荐设备设计

C. Singh, V. Himayanth, B. Balakiruthiga
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引用次数: 0

摘要

由于人工智能和机器学习技术的新兴发展,各种基于人类情感和人类心理实时方面的预测系统被开发出来。面部识别系统就是其中的一种机制,它是预测人类情绪的最具活力的策略。它广泛应用于监控系统、故障识别和其他与安全相关的方面。基于人类情感,研究人员已经提出了几种音乐推荐系统。本文旨在提出一种基于人脸识别的音乐推荐系统来治疗心理患者。这有助于患者从精神压力、焦虑和抑郁中恢复过来。该方法旨在考虑当前框架中人脸识别系统的局限性,例如需要降低深度特征提取的处理延迟以及需要设计基于深度卷积神经网络(DCNN)架构的迷你异常技术。fer2013图像数据集由35000张带有自动标签的人脸照片组成。它用于确定所提出的方法检测各种情绪类别的效果。与其他状态的方法相比,在CNN层中使用的Mini异常技术作为一个轻量级系统。该方案具有92%的准确率,消除了现有框架之间的障碍。建议的音乐是从音乐数据库中提取的,然后根据算法的输出进一步映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of a Music Recommendation Device Using Mini-Xception CNN and Facial Recognition
Due to the emerging developments in Artificial Intelligence and Machine Learning Technologies, various prediction systems are been developed based on human emotions and real time aspects of human psychology as well. Facial recognition system is one such mechanism which is the most vibrant strategy used for predicting human emotions. It is extensively applied in surveillance systems, fault identification and other security related aspects. Based on the human emotions researchers have already proposed several music recommendation systems. This paper aims to propose a Facial recognition-based music recommendation system to treat the psychology patients. This helps to recover the patients from mental stress, anxiety, and depression. The suggested method aims to take into account the limitations of the face recognition system in current frameworks, such as the requirement to lower the processing delay for deep feature extraction and the necessity to design a Mini exception technique based on Deep Convolutional Neural Network (DCNN) architecture. The FER- 2013 image dataset, which consists of 35000 face photos with automated labelling is considered. It is used to determine how well the proposed approach would detect the various emotion classes. In comparison to other states of methods, the Mini exception technique utilised in CNN layers acts as a lightweight system. The proposed solution has a 92% accuracy rate and removes the barrier between the current frameworks. The suggested music is taken from a music database and then further mapped in accordance with the algorithm's output.
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