544 research outputs found

    A Fully-differential Electrostatic Micropump with Anti-pull-down Feature

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    In this poster, a fully-differential electrostatic micropump with anti-pull-down feature is proposed. The micropump has glass-silicon-silicon-glass compound palindromic symmetry structure. Its double membranes can be activated to vibrate simultaneously. Compared to the traditional single-membrane design, the chamber volume and the pumping rate can be doubled. Besides, to overcome pull-down limitation, the proposed micropump has a special design to extend displacement of the membrane without triggering the pull-down effect. The proposed micropump can be used for lab-on-a-chip and micro drug delivery applications

    Autoencoder with Group-based Decoder and Multi-task Optimization for Anomalous Sound Detection

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    In industry, machine anomalous sound detection (ASD) is in great demand. However, collecting enough abnormal samples is difficult due to the high cost, which boosts the rapid development of unsupervised ASD algorithms. Autoencoder (AE) based methods have been widely used for unsupervised ASD, but suffer from problems including 'shortcut', poor anti-noise ability and sub-optimal quality of features. To address these challenges, we propose a new AE-based framework termed AEGM. Specifically, we first insert an auxiliary classifier into AE to enhance ASD in a multi-task learning manner. Then, we design a group-based decoder structure, accompanied by an adaptive loss function, to endow the model with domain-specific knowledge. Results on the DCASE 2021 Task 2 development set show that our methods achieve a relative improvement of 13.11% and 15.20% respectively in average AUC over the official AE and MobileNetV2 across test sets of seven machines.Comment: Submitted to the 2024 IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP 2024

    Phonetic-assisted Multi-Target Units Modeling for Improving Conformer-Transducer ASR system

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    Exploiting effective target modeling units is very important and has always been a concern in end-to-end automatic speech recognition (ASR). In this work, we propose a phonetic-assisted multi-target units (PMU) modeling approach, to enhance the Conformer-Transducer ASR system in a progressive representation learning manner. Specifically, PMU first uses the pronunciation-assisted subword modeling (PASM) and byte pair encoding (BPE) to produce phonetic-induced and text-induced target units separately; Then, three new frameworks are investigated to enhance the acoustic encoder, including a basic PMU, a paraCTC and a pcaCTC, they integrate the PASM and BPE units at different levels for CTC and transducer multi-task training. Experiments on both LibriSpeech and accented ASR tasks show that, the proposed PMU significantly outperforms the conventional BPE, it reduces the WER of LibriSpeech clean, other, and six accented ASR testsets by relative 12.7%, 6.0% and 7.7%, respectively.Comment: 5 pages, 1 figures, submitted to ICASSP 202
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