a DL model for image resolution enhancement and optimization for edge devices
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Date
2024
Journal Title
Journal ISSN
Volume Title
Publisher
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.
Description
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).