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  4. LimitNet: progressive, content-aware image offloading for extremelyWeak devices & networks
 
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LimitNet: progressive, content-aware image offloading for extremelyWeak devices & networks

Publikationstyp
Conference Paper
Date Issued
2024-06
Sprache
English
Author(s)
Hojjat, Ali  
Haberer, Janek  
Zainab, Tayyaba  
Landsiedel, Olaf  
TORE-URI
https://hdl.handle.net/11420/53824
Start Page
519
End Page
533
Citation
22nd Annual International Conference on Mobile Systems, Applications and Services, MOBISYS 2024
Contribution to Conference
22nd Annual International Conference on Mobile Systems, Applications and Services, MOBISYS 2024  
Publisher DOI
10.1145/3643832.3661856
Scopus ID
2-s2.0-85196181544
Publisher
Association for Computing Machinery
ISBN
979-8-4007-0581-6
IoT devices have limited hardware capabilities and are often deployed in remote areas. Consequently, advanced vision models surpass such devices' processing and storage capabilities, requiring offloading of such tasks to the cloud. However, remote areas often rely on LPWANs technology with limited bandwidth, high packet loss rates, and extremely low duty cycles, which makes fast offloading for time-sensitive inference challenging. Today's approaches, which are deployable on weak devices, generate a non-progressive bit stream, and therefore, their decoding quality suffers strongly when data is only partially available on the cloud at a deadline due to limited bandwidth or packet losses. In this paper, we introduce LimitNet, a progressive, content-Aware image compression model designed for extremely weak devices and networks. LimitNet's lightweight progressive encoder prioritizes critical data during transmission based on the content of the image, which gives the cloud the opportunity to run inference even with partial data availability. Experimental results demonstrate that LimitNet, on average, compared to SOTA, achieves 14.01 p.p. (percentage point) higher accuracy on ImageNet1000, 18.01 pp on CIFAR100, and 0.1 higher mAP@0.5 on COCO. Also, on average, LimitNet saves 61.24% bandwidth on ImageNet1000, 83.68% on CIFAR100, and 42.25% on the COCO dataset compared to SOTA, while it only has 4% more encoding time compared to JPEG (with a fixed quality) on STM32F7 (Cortex-M7).
Subjects
content-Aware encoding | deep learning | edge computing | image compression | internet of things | lightweight autoencoders | progressive compression | progressive offloading
DDC Class
600: Technology
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