利用声学分析对儿童情绪状态进行持续评估

Yuan Gong, C. Poellabauer
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引用次数: 7

摘要

情绪和行为障碍(EBD)是儿童和青少年普遍关注的保健问题。预防和早期干预是改善问题的最有力的工具,因此,及时准确地发现异常的情绪模式至关重要。在本文中,我们提出了一个系统,检测儿童的第二级情绪状态使用小时级别的录音。该系统由音频分割和说话人跟踪前端以及情感识别后端组成。前端采用监督式支持向量机提高其对短而不一致的儿童语音模式的鲁棒性,后端采用端到端深度学习提高其对噪声和分割错误的鲁棒性。我们进一步证明了所提出的系统作为自动情感分析工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Continuous Assessment of Children’s Emotional States Using Acoustic Analysis
Emotional and behavioral disorders (EBD) are a widespread healthcare concern in children and adolescents. Prevention and early intervention are the most powerful tools in ameliorating the problem, and therefore, timely and accurate detection of abnormal emotional patterns is of vital importance. In this paper, we propose a system that detects second-level emotional states of children using hour-level audio recordings. The proposed system consists of an audio segmentation and speaker tracking front-end along with an emotion recognition back-end. Supervised support vector machine is used in the front-end to improve its robustness to short and inconsistent child speech pattern and end-to-end deep learning is used in the emotion recognition back-end to improve its robustness to noise and segmentation error. We further demonstrate the potential of the proposed system as an automated emotion analysis tool.
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