ASAP-FE: Energy-Efficient Feature Extraction Enabling Multi-Channel Keyword Spotting on Edge Processors
Jongin Choi, Jina Park, Woojoo Lee, Jae-Jin Lee, Massoud Pedram

TL;DR
ASAP-FE is a hardware-efficient feature extraction framework that significantly reduces energy and computational load for multi-channel keyword spotting on edge devices, enabling real-time processing with minimal accuracy loss.
Contribution
The paper introduces a novel, energy-efficient front-end architecture with innovative framing, sparsity exploitation, and parallel processing techniques for multi-channel KWS on edge processors.
Findings
Reduces workload by 62.73% compared to baseline
Supports real-time processing for up to 32 channels
Maintains less than 1% accuracy drop
Abstract
Multi-channel keyword spotting (KWS) has become crucial for voice-based applications in edge environments. However, its substantial computational and energy requirements pose significant challenges. We introduce ASAP-FE (Agile Sparsity-Aware Parallelized-Feature Extractor), a hardware-oriented front-end designed to address these challenges. Our framework incorporates three key innovations: (1) Half-overlapped Infinite Impulse Response (IIR) Framing: This reduces redundant data by approximately 25% while maintaining essential phoneme transition cues. (2) Sparsity-aware Data Reduction: We exploit frame-level sparsity to achieve an additional 50% data reduction by combining frame skipping with stride-based filtering. (3) Dynamic Parallel Processing: We introduce a parameterizable filter cluster and a priority-based scheduling algorithm that allows parallel execution of IIR filtering tasks,…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Web Data Mining and Analysis · Text and Document Classification Technologies
