Measuring personal head-related transfer functions (HRTFs) is essential in binaural audio. Personal HRTFs are not only required for binaural rendering and for loudspeaker-based binaural reproduction using crosstalk cancellation, but they also serve as a basis for data-driven HRTF individualization techniques and psychoacoustic experiments. Although many attempts have been made to expedite HRTF measurements, the rotational velocities in today's measurement systems remain lower than those in natural head movements. To cope with faster rotations, we present a novel continuous HRTF measurement method. This method estimates the HRTFs offline using a Kalman smoother and learns state-space parameters, including the system model, on short signal segments, utilizing the expectation maximization algorithm. We evaluated our method in simulated single-channel and multi-channel measurements using a rigid sphere HRTF model. Comparing with conventional methods, we found that the system distances are improved by up to 30 dB.
翻译:测量与个人头有关的转移功能(HRTF)在双声音响中至关重要。个人HRTF不仅需要用于双声谱转换和使用交叉话语取消以扩音器为基础的双声波复制,而且还需要作为数据驱动的HRTF个性化技术和心理声学实验的基础。虽然已多次尝试加快对HRTF的测量,但当今测量系统中的旋转速度仍然低于自然头部移动速度。为了应对更快的旋转,我们提出了一个新的持续HRTF测量方法。这种方法估计了人力资源工作队离线使用Kalman滑动器进行光滑动,并利用预期最大化算法在短信号段学习包括系统模型在内的状态空间参数。我们在模拟单声道和多声道测量方法中使用了僵硬的域HRTF模型进行了评估。与常规方法相比,我们发现该系统的距离由30 dB得到改进。