A novel Adaptive Kolmogorov Arnold Sparse Masked Attention Model with multi-loss optimization for Acoustic Echo Cancellation in double-talk noisy scenario

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Soni Ishwarya V., Mohanaprasad K.
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引用次数: 0

Abstract

In recent years, deep learning techniques have emerged as the predominant approach for Acoustic Echo Cancellation (AEC), owing to their capacity to effectively model complex and nonlinear patterns. This paper presents a novel Adaptive Kolmogorov Arnold Network-Based Sparse Masked Attention Model (KASMA-LossNet) with multi-loss optimization inspired by the Kolmogorov Arnold representation theorem. The model is designed to capture complex nonlinear patterns, thereby improving speech quality and enhancing echo cancellation effectiveness, all while reducing the model’s computational load. The model effectively simplifies complex nonlinear multivariate functions into univariate representations, which is crucial for handling the intricate nonlinear aspects of echo. The KAN-based attention module is designed to apprehend dense speech patterns and analyze the relationships between echo, noise, and the target signal. It also excels at identifying long-range dependencies within the signal, assigning weight scores based on their relevance to the task, and offering exceptional flexibility, enabling the model to adapt to diverse acoustic conditions. To enhance training efficiency, three losses (smoothL1 loss, magnitude loss and log spectral distance (LSD) loss) are combined and integrated into the model, accelerating convergence, speeding up the training process, and delivering more precise results. The proposed model was implemented and tested, demonstrating notable improvements in echo return loss enhancement (ERLE) and perceptual evaluation of speech quality (PESQ). The reduction in computational load of the proposed system is demonstrated through steady GPU utilization and reduced convergence time.

Abstract Image

基于多损耗优化的自适应Kolmogorov - Arnold稀疏掩码注意模型
近年来,深度学习技术已成为声学回波消除(AEC)的主要方法,因为它们能够有效地模拟复杂和非线性模式。基于Kolmogorov Arnold表示定理,提出了一种基于自适应Kolmogorov Arnold网络的多损失优化稀疏掩蔽注意力模型(KASMA-LossNet)。该模型旨在捕获复杂的非线性模式,从而提高语音质量和增强回波抵消效果,同时减少模型的计算负荷。该模型有效地将复杂的非线性多变量函数简化为单变量表示,这对于处理复杂的回波非线性问题至关重要。基于kann的注意模块旨在理解密集的语音模式,并分析回声、噪声和目标信号之间的关系。它还擅长识别信号中的远程依赖关系,根据它们与任务的相关性分配权重分数,并提供卓越的灵活性,使模型能够适应不同的声学条件。为了提高训练效率,将平滑l1损失、幅度损失和对数谱距离(LSD)损失这三种损失组合并集成到模型中,加速收敛,加快训练过程,提供更精确的结果。该模型在回波回波损耗增强(ERLE)和语音质量感知评估(PESQ)方面有显著改善。通过稳定的GPU利用率和缩短的收敛时间,证明了该系统计算负荷的减少。
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来源期刊
Computer Speech and Language
Computer Speech and Language 工程技术-计算机:人工智能
CiteScore
11.30
自引率
4.70%
发文量
80
审稿时长
22.9 weeks
期刊介绍: Computer Speech & Language publishes reports of original research related to the recognition, understanding, production, coding and mining of speech and language. The speech and language sciences have a long history, but it is only relatively recently that large-scale implementation of and experimentation with complex models of speech and language processing has become feasible. Such research is often carried out somewhat separately by practitioners of artificial intelligence, computer science, electronic engineering, information retrieval, linguistics, phonetics, or psychology.
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