Paper ID: 2206.05606
Signal-informed DNN-based DOA Estimation combining an External Microphone and GCC-PHAT Features
Ulrik Kowalk, Simon Doclo, Joerg Bitzer
Aiming at estimating the direction of arrival (DOA) of a desired speaker in a multi-talker environment using a microphone array, in this paper we propose a signal-informed method exploiting the availability of an external microphone attached to the desired speaker. The proposed method applies a binary mask to the GCC-PHAT input features of a convolutional neural network, where the binary mask is computed based on the power distribution of the external microphone signal. Experimental results for a reverberant scenario with up to four interfering speakers demonstrate that the signal-informed masking improves the localization accuracy, without requiring any knowledge about the interfering speakers.
Submitted: Jun 11, 2022