Leveraging Domain Knowledge using Machine Learning for Image Compression in Internet-of-Things
Prabuddha Chakraborty, Jonathan Cruz, Swarup Bhunia

TL;DR
This paper introduces MAGIC, a machine learning-based image compression framework tailored for IoT applications, which significantly improves compression ratios while preserving coarse-grain features for machine vision tasks.
Contribution
MAGIC leverages domain knowledge and machine learning to achieve high compression ratios with configurable quality, surpassing traditional standards like JPEG 2000 and WebP.
Findings
Up to 42.65x compression with maintained accuracy.
Superior consistency in compression rates across images.
Effective compression beyond standard quality limits.
Abstract
The emergent ecosystems of intelligent edge devices in diverse Internet of Things (IoT) applications, from automatic surveillance to precision agriculture, increasingly rely on recording and processing variety of image data. Due to resource constraints, e.g., energy and communication bandwidth requirements, these applications require compressing the recorded images before transmission. For these applications, image compression commonly requires: (1) maintaining features for coarse-grain pattern recognition instead of the high-level details for human perception due to machine-to-machine communications; (2) high compression ratio that leads to improved energy and transmission efficiency; (3) large dynamic range of compression and an easy trade-off between compression factor and quality of reconstruction to accommodate a wide diversity of IoT applications as well as their time-varying…
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Taxonomy
TopicsAdvanced Data Compression Techniques · Image Retrieval and Classification Techniques · Advanced Image and Video Retrieval Techniques
