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OASIS: Optimized Lightweight Autoencoder System for Distributed In-Sensor computing

OASIS: Optimized Lightweight Autoencoder System for Distributed In-Sensor computing

来源:Arxiv_logoArxiv
英文摘要

In-sensor computing, which integrates computation directly within the sensor, has emerged as a promising paradigm for machine vision applications such as AR/VR and smart home systems. By processing data on-chip before transmission, it alleviates the bandwidth bottleneck caused by high-resolution, high-frame-rate image transmission, particularly in video applications. We envision a system architecture that integrates a CMOS image sensor (CIS) with a logic chip via advanced packaging, where the logic chip processes early-stage deep neural network (DNN) layers. However, its limited compute and memory make deploying advanced DNNs challenging. A simple solution is to split the model, executing the first part on the logic chip and the rest off-chip. However, modern DNNs require multiple layers before dimensionality reduction, limiting their ability to achieve the primary goal of in-sensor computing: minimizing data bandwidth. To address this, we propose a dual-branch autoencoder-based vision architecture that deploys a lightweight encoder on the logic chip while the task-specific network runs off-chip. The encoder is trained using a triple loss function: (1) task-specific loss to optimize accuracy, (2) entropy loss to enforce compact and compressible representations, and (3) reconstruction loss (mean-square error) to preserve essential visual information. This design enables a four-order-of-magnitude reduction in output activation dimensionality compared to input images, resulting in a $2{-}4.5\times$ decrease in energy consumption, as validated by our hardware-backed semi-analytical energy models. We evaluate our approach on CNN and ViT-based models across applications in smart home and augmented reality domains, achieving state-of-the-art accuracy with energy efficiency of up to 22.7 TOPS/W.

Chengwei Zhou、Sreetama Sarkar、Yuming Li、Arnab Sanyal、Gourav Datta

半导体技术微电子学、集成电路电子技术应用计算技术、计算机技术

Chengwei Zhou,Sreetama Sarkar,Yuming Li,Arnab Sanyal,Gourav Datta.OASIS: Optimized Lightweight Autoencoder System for Distributed In-Sensor computing[EB/OL].(2025-05-04)[2025-06-25].https://arxiv.org/abs/2505.02256.点此复制

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