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HRTF magnitude synthesis via sparse representation of anthropometric features

机译:通过人体测量特征的稀疏表示来进行HRTF幅度合成

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We propose a method for the synthesis of the magnitudes of Head-related Transfer Functions (HRTFs) using a sparse representation of anthropometric features. Our approach treats the HRTF synthesis problem as finding a sparse representation of the subject's anthropometric features w.r.t. the anthropometric features in the training set. The fundamental assumption is that the magnitudes of a given HRTF set can be described by the same sparse combination as the anthropometric data. Thus, we learn a sparse vector that represents the subject's anthropometric features as a linear superposition of the anthropometric features of a small subset of subjects from the training data. Then, we apply the same sparse vector directly on the HRTF tensor data. For evaluation purpose we use a new dataset, containing both anthropometric features and HRTFs. We compare the proposed sparse representation based approach with ridge regression and with the data of a manikin (which was designed based on average anthropometric data), and we simulate the best and the worst possible classifiers to select one of the HRTFs from the dataset. For instrumental evaluation we use log-spectral distortion. Experiments show that our sparse representation outperforms all other evaluated techniques, and that the synthesized HRTFs are almost as good as the best possible HRTF classifier.
机译:我们提出了一种使用人体测量学特征的稀疏表示来合成与头部相关的传递函数(HRTF)大小的方法。我们的方法将HRTF综合问题视为找到受试者人体测量特征的稀疏表示。训练集中的人体测量特征。基本假设是,给定的HRTF集的大小可以用与人体测量数据相同的稀疏组合来描述。因此,我们从训练数据中学习了一个稀疏向量,该向量将受试者的人体测量特征表示为一小部分受试者的人体测量特征的线性叠加。然后,我们将相同的稀疏向量直接应用于HRTF张量数据。为了进行评估,我们使用了一个新的数据集,其中包含人体测量特征和HRTF。我们将提出的基于稀疏表示的方法与岭回归和人体模型的数据(基于人体模型的平均数据进行比较)进行了比较,并模拟了最佳和最差的分类器以从数据集中选择一种HRTF。对于仪器评估,我们使用对数频谱失真。实验表明,我们的稀疏表示优于所有其他评估技术,并且合成的HRTF与最佳HRTF分类器几乎一样好。

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