ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs
While Deep Neural Network (DNN) models have transformed machine vision capabilities, their extremely high computational complexity and model sizes present a formidable deployment roadblock for AIoT applications. We show that the complexity-vs-accuracy-vs-communication tradeoffs for such DNN models c...
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sg-smu-ink.sis_research-81682023-08-04T02:56:15Z ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs JAYARAJAH, Kasthuri WANNIARACHCHIGE, Dhanuja ABDELZAHER, Tarek MISRA, Archan While Deep Neural Network (DNN) models have transformed machine vision capabilities, their extremely high computational complexity and model sizes present a formidable deployment roadblock for AIoT applications. We show that the complexity-vs-accuracy-vs-communication tradeoffs for such DNN models can be significantly addressed via a novel, lightweight form of “collaborative machine intelligence” that requires only runtime changes to the inference process. In our proposed approach, called ComAI, the DNN pipelines of different vision sensors share intermediate processing state with one another, effectively providing hints about objects located within their mutually-overlapping Field-of-Views (FoVs). CoMAI uses two novel techniques: (a) a secondary shallow ML model that uses features from early layers of a peer DNN to predict object confidence values in the image, and (b) a pipelined sharing of such confidence values, by collaborators, that is then used to bias a reference DNN’s outputs. We demonstrate that CoMAI (a) can boost accuracy (recall) of DNN inference by 20-50%, (b) works across heterogeneous DNN models and deployments, and (c) incurs negligible processing, bandwidth and processing overheads compared to non-collaborative baselines. 2022-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/7164 info:doi/10.1109/INFOCOM48880.2022.9796769 https://ink.library.smu.edu.sg/context/sis_research/article/8168/viewcontent/infocom22_collabml_cameraready.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Deep learning runtime machine vision neural networks Artificial Intelligence and Robotics Graphics and Human Computer Interfaces Software Engineering |
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Deep learning runtime machine vision neural networks Artificial Intelligence and Robotics Graphics and Human Computer Interfaces Software Engineering JAYARAJAH, Kasthuri WANNIARACHCHIGE, Dhanuja ABDELZAHER, Tarek MISRA, Archan ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
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While Deep Neural Network (DNN) models have transformed machine vision capabilities, their extremely high computational complexity and model sizes present a formidable deployment roadblock for AIoT applications. We show that the complexity-vs-accuracy-vs-communication tradeoffs for such DNN models can be significantly addressed via a novel, lightweight form of “collaborative machine intelligence” that requires only runtime changes to the inference process. In our proposed approach, called ComAI, the DNN pipelines of different vision sensors share intermediate processing state with one another, effectively providing hints about objects located within their mutually-overlapping Field-of-Views (FoVs). CoMAI uses two novel techniques: (a) a secondary shallow ML model that uses features from early layers of a peer DNN to predict object confidence values in the image, and (b) a pipelined sharing of such confidence values, by collaborators, that is then used to bias a reference DNN’s outputs. We demonstrate that CoMAI (a) can boost accuracy (recall) of DNN inference by 20-50%, (b) works across heterogeneous DNN models and deployments, and (c) incurs negligible processing, bandwidth and processing overheads compared to non-collaborative baselines. |
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JAYARAJAH, Kasthuri WANNIARACHCHIGE, Dhanuja ABDELZAHER, Tarek MISRA, Archan |
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JAYARAJAH, Kasthuri WANNIARACHCHIGE, Dhanuja ABDELZAHER, Tarek MISRA, Archan |
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JAYARAJAH, Kasthuri |
title |
ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
title_short |
ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
title_full |
ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
title_fullStr |
ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
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ComAI: Enabling lightweight, collaborative intelligence by retrofitting vision DNNs |
title_sort |
comai: enabling lightweight, collaborative intelligence by retrofitting vision dnns |
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Institutional Knowledge at Singapore Management University |
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2022 |
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https://ink.library.smu.edu.sg/sis_research/7164 https://ink.library.smu.edu.sg/context/sis_research/article/8168/viewcontent/infocom22_collabml_cameraready.pdf |
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