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Mobile-friendly Image de-noising: Hardware Conscious Optimization for Edge Application

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Image enhancement is a critical task in computer vision and photography that is often entangled with noise. This renders the traditional Image Signal Processing (ISP) ineffective compared to the advances in deep learning. However, the success of such methods is increasingly associated with the ease of their deployment on edge devices, such as smartphones. This work presents a novel mobile-friendly network for image de-noising obtained with Entropy-Regularized differentiable Neural Architecture Search (NAS) on a hardware-aware search space for a U-Net architecture, which is first-of-its-kind. The designed model has 12% less parameters, with ~2-fold improvement in ondevice latency and 1.5-fold improvement in the memory footprint for a 0.7% drop in PSNR, when deployed and profiled on Samsung Galaxy S24 Ultra. Compared to the SOTA Swin-Transformer for Image Restoration, the proposed network had competitive accuracy with ~18-fold reduction in GMACs. Further, the network was tested successfully for Gaussian de-noising with 3 intensities on 4 benchmarks and real-world de-noising on 1 benchmark demonstrating its generalization ability.

Srinivas Miriyala, Sowmya Vajrala, Hitesh Kumar, Sravanth Kodavanti, Vikram Rajendiran• 2026

Related benchmarks

TaskDatasetResultRank
Image DenoisingUrban100
PSNR24.95
222
Image DenoisingSIDD
PSNR43.09
95
Image DenoisingKodak24--
48
Image DenoisingMcMaster
PSNR28.47
27
Image De-noisingCBSD 68
PSNR27.88
24
Raw image de-noisingSenseNoise
PSNR34.6
8
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