Speaker recognition is an active research area that contains notable usage in biometric security and authentication system. Currently, there exist many well-performing models in the speaker recognition domain. However, most of the advanced models implement deep learning that requires GPU support for real-time speech recognition, and it is not suitable for low-end devices. In this paper, we propose a lightweight text-independent speaker recognition model based on random forest classifier. It also introduces new features that are used for both speaker verification and identification tasks. The proposed model uses human speech based timbral properties as features that are classified using random forest. Timbre refers to the very basic properties of sound that allow listeners to discriminate among them. The prototype uses seven most actively searched timbre properties, boominess, brightness, depth, hardness, roughness, sharpness, and warmth as features of our speaker recognition model. The experiment is carried out on speaker verification and speaker identification tasks and shows the achievements and drawbacks of the proposed model. In the speaker identification phase, it achieves a maximum accuracy of 78%. On the contrary, in the speaker verification phase, the model maintains an accuracy of 80% having an equal error rate (ERR) of 0.24.
翻译:发言者的识别是一个积极的研究领域,在生物鉴别安全和认证系统中有显著的用途。目前,在发言者的识别领域有许多表现良好的模型。但是,大多数先进的模型都进行深层次的学习,需要 GPU 支持实时语音识别,这不适合低端装置。在本文中,我们提议了一种基于随机森林分类器的轻量文本独立发言者识别模型,还引入了用于发言者核实和识别任务的新特征。拟议模型使用基于Timbral特性的人言作为使用随机森林分类的特征。Timbre 指的是声音的非常基本特性,使听众能够对他们区别对待。原型使用7个最积极搜索的Timbre特性、蓬勃性、亮性、深度、严谨性、粗糙性、敏锐性和温暖性,作为我们语音识别模型的特征。实验在语音校验和语音识别任务上进行,并展示了拟议模型的成就和背影。在发言者识别阶段,它达到78 %的最大精确度。相反,在发言者核查阶段,模型保持80%的准确度,ER4 0.1 的精确度。