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Personalization of head-related transfer functions (HRTF) based on automatic photo-anthropometry and inference from a database

机译:基于自动光人体测量法和数据库推断的头部相关传递函数(HRTF)的个性化

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摘要

A method is presented to personalize HRTFs based on anthropometric features obtained from digital portraits of a subject through computer vision, using the active shape models (ASM) algorithm. The method presented here is automatic, advancing previous work, and uses a simple more efficient 2D image model to represent the subject. The ASM is trained beforehand on a data set of manually annotated images of other subjects, and then used to automatically recognize anthropometric features of the ears, head, and torso, on photographs of the given subject. Anthropometric parameters in metric linear units are obtained from the image model as a function of camera settings, field of view, and distance to the subject. Anthropometric data are finally used to personalize HRTFs for the subject, by inference from the CIPIC HRTF database, containing anthropometric and HRTF data for a number of subjects, using the method of best anthropometric match selection. Results are analyzed, concluding that personalization of HRTFs can be achieved by automatic photo-anthropometry through computer vision algorithms, and inference of HRTFs from a database. Results were evaluated using two definitions of acoustic spectral distortion, as comparative measures of performance: one in magnitude only, previously proposed, and a novel one in magnitude and phase. However, evidence is also presented suggesting that these performance metrics need to be improved further, and that current anthropometric and HRTF databases might still be insufficient to provide more satisfactory results, pointing out to the need for more research in this area. (C) 2015 Elsevier Ltd. All rights reserved.
机译:提出了一种使用主动形状模型(ASM)算法根据通过人体视觉从受试者的数字肖像获得的人体测量学特征对HRTF进行个性化的方法。此处介绍的方法是自动的,可以改进先前的工作,并使用简单,更有效的2D图像模型来表示主题。 ASM事先在其他对象的手动注释图像的数据集上进行了训练,然后用于在给定对象的照片上自动识别耳朵,头部和躯干的人体测量特征。度量线性单位中的人体测量参数是从图像模型中获得的,取决于相机设置,视野和到对象的距离。人体测量数据最终被用来通过使用最佳人体测量匹配选择方法从CIPIC HRTF数据库推断出个性化受试者的HRTF,该数据库包含许多受试者的人体测量和HRTF数据。对结果进行了分析,得出结论认为,可以通过计算机视觉算法通过自动光人体测量法以及从数据库推断HRTF来实现HRTF的个性化。使用声学频谱失真的两种定义作为性能的比较量度来评估结果:一种仅在幅度上提出(先前提出),另一种在幅度和相位上新颖。但是,也有证据表明这些性能指标需要进一步改善,并且当前的人体测量学和HRTF数据库可能仍不足以提供更令人满意的结果,从而指出了在这一领域需要更多研究的必要。 (C)2015 Elsevier Ltd.保留所有权利。

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