Speaker Diaphragm Excursion Prediction: deep attention and online adaptation
Yuwei Ren (Qualcomm AI Research, QUALCOMM Wireless Communication Technologies (China) Limited); Matt Zivney (Qualcomm AI Research, Qualcomm Technologies, Inc.); Yin Huang (Qualcomm); Eddie Choy (Qualcomm AI Research, Qualcomm Technologies, Inc.); Chirag Patel (Qualcomm); Hao Xu (Qualcomm AI Research, Qualcomm Technologies, Inc.)
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Speaker protection algorithm is to leverage the playback signal properties to prevent over excursion while maintaining maximum loudness, especially for the mobile phone with tiny loudspeakers. This paper proposes efficient DL solutions to accurately model and predict the nonlinear excursion, which is challenging for conventional solutions. Firstly, we build the experiment and pre-processing pipeline, where the feedback current and voltage are sampled as input, and laser is employed to measure the excursion as ground truth. Secondly, one FFTNet model is proposed to explore the dominant low-frequency and other unknown harmonics, and compares to a baseline ConvNet model. In addition, BN re-estimation is designed to explore the online adaptation; and INT8 quantization based on AI Model efficiency toolkit (AIMET) is applied to further reduce the complexity. The proposed algorithm is verified in two speakers and 3 typical deployment scenarios, and >99% residual DC is less than 0.1 mm, much better than traditional solutions.