a DL model for image resolution enhancement and optimization for edge devices

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Date

2024

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université Ghardaia

Abstract

In recent years, deep learning-based single image super-resolution (SISR) has attracted considerable attention and achieved significant success on advanced GPUs. Most state- of-the-art methods require a large number of parameters, memory, and computational resources, often resulting in inferior inference times on mobile devices. In this thesis, we introduce a plain convolution network augmented with a nearest- neighbor convolution module and 8-bit quantization to achieve real-time SISR on NPUs. Furthermore, we evaluate the efficiency of our network architecture by comparing ex- periments on mobile devices to select the tensor operations to implement. The model comprises only 52 K parameters, achieves 4× upscaling in 0.065 s on a Snapdragon 865 CPU smartphone, and by comparing to other SR methods, we found that our model can achieve high fidelity super resolution results while using fewer inference times.

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Keywords

Single image super-resolution (SISR), Quantization, Nearest-Neighbor Con- volution, Neural Processing Unit (NPU)., super-résolution d’image unique, quantification, convolution du plus proche voisin, Unité de traitement neuronal (NPU).

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