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Proceedings Paper
Volume: 37 | Article ID: AVM-109
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FlexEye - Application Specific Quality-scalable ISP Tuning
  DOI :  10.2352/EI.2025.37.15.AVM-109  Published OnlineFebruary 2025
Abstract
Abstract

As AI becomes more prevalent, edge devices face challenges due to limited resources and the high demands of deep learning (DL) applications. In such cases, quality scalability can offer significant benefits by adjusting computational load based on available resources. Traditional Image-Signal-Processor (ISP) tuning methods prioritize maximizing intelligence performance, such as classification accuracy, while neglecting critical system constraints like latency and power dissipation. To address this gap, we introduce FlexEye, an application-specific, quality-scalable ISP tuning framework that leverages ISP parameters as a control knob for quality of service (QoS), enabling trade-off between quality and performance. Experimental results demonstrate up to 6% improvement in Object Detection accuracy and a 22.5% reduction in ISP latency compared to state of the art. In addition, we also evaluate Instance Segmentation task, where 1.2% accuracy improvement is attained with a 73% latency reduction.

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  Cite this article 

Sumbal Akram, Muhammad Abdullah, Khuzaeymah Nasir, Shaharyar Yaqub, Rehan Ahmed, Rehan Hafiz, "FlexEye - Application Specific Quality-scalable ISP Tuningin Electronic Imaging,  2025,  pp 109-1 - 109-6,  https://doi.org/10.2352/EI.2025.37.15.AVM-109

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