A Novel Blind Source Separation Framework Towards Maximum Signal-To-Interference Ratio
This addresses the challenge of improving separation performance in signal processing applications, but it appears incremental as it builds on existing independence-based methods.
The paper tackles the problem of blind source separation by proposing a new framework called MVICA that aims to achieve maximum signal-to-interference ratio, with experimental results showing superiority over state-of-the-art algorithms in terms of SIR, signal-to-distortion ratio, and automatic speech recognition rate.
This letter proposes a new blind source separation (BSS) framework termed minimum variance independent component analysis (MVICA), which can potentially achieve the maximum output signal-to-interference ratio (SIR) while also allowing more flexibility in real implementations. The statistical independence assumption has been the foundation of the most dominant BSS techniques in recent decades. However, this assumption does not always hold true and the accurate probabilistic modeling of source is inherently difficult. To overcome these limitations and improve the separation performance, the MVICA framework is rigorously derived by optimizing the design of these independence-based BSS algorithms with the maximum SIR criterion. A deep neural network-supported implementation of MVICA is subsequently described. Experimental results under various conditions show the superiority of MVICA over the state-of-the-art BSS algorithms, in terms of not only SIR but also signal-to-distortion ratio and automatic speech recognition rate.