MANTIS: A Mixed-Signal Near-Sensor Convolutional Imager SoC Using Charge-Domain 4b-Weighted 5-to-84-TOPS/W MAC Operations for Feature Extraction and Region-of-Interest Detection
Martin Lefebvre, David Bol

TL;DR
MANTIS is a mixed-signal vision SoC optimized for low-power edge AI tasks, combining charge-domain MAC operations and multi-scale filters for efficient feature extraction and region-of-interest detection.
Contribution
The paper introduces MANTIS, a novel mixed-signal vision SoC with charge-domain MAC and large filters, tailored for low-power, medium-complexity edge AI applications.
Findings
Achieves 4.6 TOPS/W at the accelerator level.
Demonstrates effective face RoI detection with 11.5% false negatives.
Reduces data transmission by 13 times compared to raw images.
Abstract
Recent advances in artificial intelligence have prompted the search for enhanced algorithms and hardware to support the deployment of machine learning at the edge. More specifically, in the context of the Internet of Things (IoT), vision chips must be able to fulfill tasks of low to medium complexity, such as feature extraction or region-of-interest (RoI) detection, with a sub-mW power budget imposed by the use of small batteries or energy harvesting. Mixed-signal vision chips relying on in- or near-sensor processing have emerged as an interesting candidate, thanks to their favorable tradeoff between energy efficiency (EE) and computational accuracy compared to digital systems for these specific tasks. In this paper, we introduce a mixed-signal convolutional imager system-on-chip (SoC) codenamed MANTIS, featuring a unique combination of large 1616 4b-weighted filters, operation…
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