CVLGIVJan 17, 2021

Trilevel Neural Architecture Search for Efficient Single Image Super-Resolution

arXiv:2101.06658v223 citations
Originality Incremental advance
AI Analysis

This work addresses the need for efficient and high-performance super-resolution models, which is important for applications like image enhancement, but it is incremental as it builds upon existing NAS methods.

The paper tackles the problem of balancing performance and efficiency in single image super-resolution by proposing a trilevel neural architecture search method, which achieves a better trade-off between model size, performance, and efficiency compared to state-of-the-art NAS approaches.

Modern solutions to the single image super-resolution (SISR) problem using deep neural networks aim not only at better performance accuracy but also at a lighter and computationally efficient model. To that end, recently, neural architecture search (NAS) approaches have shown some tremendous potential. Following the same underlying, in this paper, we suggest a novel trilevel NAS method that provides a better balance between different efficiency metrics and performance to solve SISR. Unlike available NAS, our search is more complete, and therefore it leads to an efficient, optimized, and compressed architecture. We innovatively introduce a trilevel search space modeling, i.e., hierarchical modeling on network-, cell-, and kernel-level structures. To make the search on trilevel spaces differentiable and efficient, we exploit a new sparsestmax technique that is excellent at generating sparse distributions of individual neural architecture candidates so that they can be better disentangled for the final selection from the enlarged search space. We further introduce the sorting technique to the sparsestmax relaxation for better network-level compression. The proposed NAS optimization additionally facilitates simultaneous search and training in a single phase, reducing search time and train time. Comprehensive evaluations on the benchmark datasets show our method's clear superiority over the state-of-the-art NAS in terms of a good trade-off between model size, performance, and efficiency.

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