Automated Customization of On-Thing Inference for Quality-of-Experience Enhancement
Yang Bai, Lixing Chen, Shaolei Ren, Jie Xu

TL;DR
This paper presents an automated method for customizing deep learning inference on IoT devices to improve user QoE, using a novel online learning algorithm that efficiently adapts to user preferences with minimal feedback.
Contribution
It introduces NeuralUCB, an online learning algorithm with knowledge transfer for on-thing inference customization, reducing user feedback while enhancing QoE.
Findings
Efficiently learns user QoE patterns with few solicitations.
Provides significant QoE improvements on IoT devices.
Demonstrates effectiveness on synthetic and real-world data.
Abstract
The rapid uptake of intelligent applications is pushing deep learning (DL) capabilities to Internet-of-Things (IoT). Despite the emergence of new tools for embedding deep neural networks (DNNs) into IoT devices, providing satisfactory Quality of Experience (QoE) to users is still challenging due to the heterogeneity in DNN architectures, IoT devices, and user preferences. This paper studies automated customization for DL inference on IoT devices (termed as on-thing inference), and our goal is to enhance user QoE by configuring the on-thing inference with an appropriate DNN for users under different usage scenarios. The core of our method is a DNN selection module that learns user QoE patterns on-the-fly and identifies the best-fit DNN for on-thing inference with the learned knowledge. It leverages a novel online learning algorithm, NeuralUCB, that has excellent generalization ability…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Image and Video Quality Assessment · Visual Attention and Saliency Detection
