In recent years, speech emotion recognition (SER) has been used in wide ranging applications, from healthcare to the commercial sector. In addition to signal processing approaches, methods for SER now also use deep learning techniques. However, generalizing over languages, corpora and recording conditions is still an open challenge in the field. Furthermore, due to the black-box nature of deep learning algorithms, a newer challenge is the lack of interpretation and transparency in the models and the decision making process. This is critical when the SER systems are deployed in applications that influence human lives. In this work we address this gap by providing an in-depth analysis of the decision making process of the proposed SER system. Towards that end, we present low-complexity SER based on undercomplete- and denoising- autoencoders that achieve an average classification accuracy of over 55\% for four-class emotion classification. Following this, we investigate the clustering of emotions in the latent space to understand the influence of the corpora on the model behavior and to obtain a physical interpretation of the latent embedding. Lastly, we explore the role of each input feature towards the performance of the SER.
翻译:近年来,语言情绪识别(SER)被广泛应用,从医疗保健到商业部门。除了信号处理方法之外,SER的方法现在也使用深层次的学习技术。然而,对语言、社团和记录条件的概括化仍然是该领域的公开挑战。此外,由于深层学习算法的黑箱性质,一个较新的挑战是模型和决策过程缺乏解释和透明度。当SER系统用于影响人类生活的应用程序时,这一点至关重要。在这项工作中,我们通过深入分析拟议的SER系统的决策程序来弥补这一差距。为了达到这一目的,我们提出了低兼容性SER, 其基础是四级情感分类的分类平均精确度超过55 ⁇ 。之后,我们调查潜伏空间中的情感组合,以了解公司对模型行为的影响,并获得对潜伏的物理解释。最后,我们探讨了每个输入特征对于SER运行的作用。