CLLGMLAug 1, 2018

Data Augmentation for Robust Keyword Spotting under Playback Interference

arXiv:1808.00563v137 citations
Originality Synthesis-oriented
AI Analysis

This work addresses a specific challenge in far-field voice control for conversational agents, offering an incremental improvement in robustness under audio playback conditions.

The paper tackled the problem of maintaining low false reject rates in keyword spotting systems under real-world playback interference, achieving a 30-45% relative reduction in false reject rates through a data augmentation strategy.

Accurate on-device keyword spotting (KWS) with low false accept and false reject rate is crucial to customer experience for far-field voice control of conversational agents. It is particularly challenging to maintain low false reject rate in real world conditions where there is (a) ambient noise from external sources such as TV, household appliances, or other speech that is not directed at the device (b) imperfect cancellation of the audio playback from the device, resulting in residual echo, after being processed by the Acoustic Echo Cancellation (AEC) system. In this paper, we propose a data augmentation strategy to improve keyword spotting performance under these challenging conditions. The training set audio is artificially corrupted by mixing in music and TV/movie audio, at different signal to interference ratios. Our results show that we get around 30-45% relative reduction in false reject rates, at a range of false alarm rates, under audio playback from such devices.

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