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Crowded cafés, clinking plates, and echoey halls make conversations exhausting. We set out to change that by fitting real deep learning into an ear-sized device and proving it can separate speech from noise with almost no delay or battery hit. The result isn’t louder sound; it’s clearer lives and less fatigue.
We walk through the full Clara enhancement path: transforming raw mic input into log-mel features, stabilizing for gain shifts, and feeding a 40-layer temporal convolutional recurrent network that predicts a mask to preserve voice and suppress noise. Then we show how a light touch of the original signal brings back space and warmth, avoiding the hollow, underwater audio that turns people off. Along the way, we tackle painful transients—the cutlery and clatter that spike hearing aids—and explain how wide dynamic range compression keeps everything comfortable and intelligible.
The heart of the story is edge AI done right. Our SPU001 chip uses unstructured sparsity to skip zero multiplies in hardware, shrinking memory needs and power draw by orders of magnitude. That lets a pruned model with effective 10 MB scale run from just one MB of SRAM while holding algorithmic latency near eight milliseconds and total path time under ten. Metrics back it up: higher scale-invariant signal-to-distortion ratios, better hearing aid speech quality scores, and strong user reports. A rapid partnership with New Sound brought this to market in about three months, and audiologists on a noisy show floor heard the difference immediately.
If you care about hearing tech, edge computing, or just making conversations effortless again, this one is for you. Hear how small silicon and smart modeling turn “AI” from a buzzword into a daily benefit. Subscribe for more deep dives on practical edge AI, share with someone who struggles in noisy rooms, and leave a review with your toughest audio environment—we might feature it next.
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Support the show
Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org
By EDGE AI FOUNDATIONCrowded cafés, clinking plates, and echoey halls make conversations exhausting. We set out to change that by fitting real deep learning into an ear-sized device and proving it can separate speech from noise with almost no delay or battery hit. The result isn’t louder sound; it’s clearer lives and less fatigue.
We walk through the full Clara enhancement path: transforming raw mic input into log-mel features, stabilizing for gain shifts, and feeding a 40-layer temporal convolutional recurrent network that predicts a mask to preserve voice and suppress noise. Then we show how a light touch of the original signal brings back space and warmth, avoiding the hollow, underwater audio that turns people off. Along the way, we tackle painful transients—the cutlery and clatter that spike hearing aids—and explain how wide dynamic range compression keeps everything comfortable and intelligible.
The heart of the story is edge AI done right. Our SPU001 chip uses unstructured sparsity to skip zero multiplies in hardware, shrinking memory needs and power draw by orders of magnitude. That lets a pruned model with effective 10 MB scale run from just one MB of SRAM while holding algorithmic latency near eight milliseconds and total path time under ten. Metrics back it up: higher scale-invariant signal-to-distortion ratios, better hearing aid speech quality scores, and strong user reports. A rapid partnership with New Sound brought this to market in about three months, and audiologists on a noisy show floor heard the difference immediately.
If you care about hearing tech, edge computing, or just making conversations effortless again, this one is for you. Hear how small silicon and smart modeling turn “AI” from a buzzword into a daily benefit. Subscribe for more deep dives on practical edge AI, share with someone who struggles in noisy rooms, and leave a review with your toughest audio environment—we might feature it next.
Send us Fan Mail
Support the show
Learn more about the EDGE AI FOUNDATION - edgeaifoundation.org