Deep Learning for Individual Listening Zone

Giovanni Pepe, L. Gabrielli, S. Squartini, L. Cattani, Carlo Tripodi
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引用次数: 4

Abstract

A recent trend in car audio systems is the generation of Individual Listening Zones (ILZ), allowing to improve phone call privacy and reduce disturbance to other passengers, without wearing headphones or earpieces. This is generally achieved by using loudspeaker arrays. In this paper, we describe an approach to achieve ILZ exploiting general purpose car loudspeakers and processing the signal through carefully designed Finite Impulse Response (FIR) filters. We propose a deep neural network approach for the design of filters coefficients in order to obtain a so-called bright zone, where the signal is clearly heard, and a dark zone, where the signal is attenuated. Additionally, the frequency response in the bright zone is constrained to be as flat as possible. Numerical experiments were performed taking the impulse responses measured with either one binaural pair or three binaural pairs for each passenger. The results in terms of attenuation and flatness prove the viability of the approach.
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个人聆听区的深度学习
汽车音响系统最近的一个趋势是个人听音区(ILZ)的产生,可以提高通话隐私,减少对其他乘客的干扰,而无需戴耳机或耳塞。这通常是通过使用扬声器阵列来实现的。在本文中,我们描述了一种利用通用汽车扬声器实现ILZ的方法,并通过精心设计的有限脉冲响应(FIR)滤波器处理信号。我们提出了一种深度神经网络方法来设计滤波器系数,以获得一个所谓的亮区,其中信号被清晰地听到,和一个暗区,其中信号被衰减。此外,在明亮区域的频率响应被限制为尽可能平坦。对每位乘客分别使用一对或三对双耳进行脉冲响应测量,并进行了数值实验。在衰减和平整度方面的结果证明了该方法的可行性。
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