基于深度学习的马拉地语料库情感计算分析

Nehul Gupta, Vedangi Thakur, Vaishnavi Patil, Tamanna Vishnoi, K. Bhangale
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引用次数: 0

摘要

语音情感识别(SER)提供了广泛的潜在用途,包括加强虚拟现实和游戏设置中的人机交互,增强对精神健康障碍的检测和跟踪,以及提高基于语音的助手和聊天机器人的精度。它面临着由于年龄、性别、地域、宗教等原因导致的跨语料库SER、语调变化、方言变化和语言韵律变化的挑战。本文介绍了基于深度卷积神经网络的马拉地语SER。我们的马拉地语数据集由15个说话者的300个记录组成,包括愤怒、快乐、悲伤和中性情绪。基于准确率、精密度、召回率和f1分数,在新数据集上对所提出的DCNN的性能进行了评估。对于5人、10人和15人,该方案提供的原始数据总体准确率分别为0.4750、0.4076和0.3927,对于5人、10人和15人,特征提取后的总体准确率分别为0.6652、0.6361和0.5800,显示了马拉地语语料库SER使用的现有技术水平的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Affective Computing for Marathi Corpus using Deep Learning
Speech Emotion Recognition (SER) offers a wide range of potential uses, including strengthening human-computer interaction in virtual reality and gaming settings, enhancing the detection and tracking of mental health disorders, and enhancing the precision of speech based assistants and chat bots. It faces the challenge of cross corpus SER, intonation variations, dialects variations and prosodic changes in language due to age, gender, region, and religion, etc. This paper presents deep Convolution Neural Network based SER for Marathi language Our novel Marathi data set consists of 300 recordings of 15 speakers for Anger, Happy, Sad and Neutral emotions. The performance of the proposed DCNN is evaluated on the novel data set based on accuracy, precision, recall and F1-score. The suggested scheme provides overall accuracy of raw data is 0.4750, 0.4076 and 0.3927 for 5,10 and 15 speakers respectively and the overall accuracy after feature extraction is 0.6652, 0.6361 and 0.5800 for 5, 10 and 15 speakers respectively shows improvement in existing state of arts utilized for SER for Marathi Corpus.
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