Adapting Whisper for Lightweight and Efficient Automatic Speech Recognition of Children for On-device Edge Applications

July 19, 2025 Β· Declared Dead Β· πŸ› Workshop on Child, Computer and Interaction

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Authors Satwik Dutta, Shruthigna Chandupatla, John Hansen arXiv ID 2507.14451 Category eess.AS: Audio & Speech Cross-listed cs.HC, cs.SD Citations 2 Venue Workshop on Child, Computer and Interaction Last Checked 3 months ago
Abstract
Reliability on cloud providers for ASR inference to support child-centered voice-based applications is becoming challenging due to regulatory and privacy challenges. Motivated by a privacy-preserving design, this study aims to develop a lightweight & efficient Whisper ASR system capable of running on a Raspberry Pi. Upon evaluation of the MyST corpus and by examining various filtering strategies to fine-tune the `tiny.en' model, a Word Error Rate (WER) of 15.9% was achieved (11.8% filtered). A low-rank compression reduces the encoder size by 0.51M with 1.26x faster inference in GPU, with 11% relative WER increase. During inference on Pi, the compressed version required ~2 GFLOPS fewer computations. The RTF for both the models ranged between [0.23-0.41] for various input audio durations. Analyzing the RAM usage and CPU temperature showed that the PI was capable of handling both the tiny models, however it was noticed that small models initiated additional overhead/thermal throttling.
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