CVMar 24, 2021

Dynamic Slimmable Network

arXiv:2103.13258v1182 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the inefficiency of dynamic sparse patterns in convolutional networks for real-world deployment, offering a solution that benefits applications requiring adaptive computation in resource-constrained environments, though it is incremental as it builds on existing slimming and dynamic network concepts.

The paper tackles the problem of dynamic network compression by proposing Dynamic Slimmable Network (DS-Net), which dynamically adjusts filter numbers at test time to achieve hardware-efficient acceleration without extra indexing burdens, resulting in up to 5.9% accuracy improvement, 2-4x computation reduction, and 1.62x real-world speedup over ResNet-50 and MobileNet on ImageNet with minimal accuracy drops.

Current dynamic networks and dynamic pruning methods have shown their promising capability in reducing theoretical computation complexity. However, dynamic sparse patterns on convolutional filters fail to achieve actual acceleration in real-world implementation, due to the extra burden of indexing, weight-copying, or zero-masking. Here, we explore a dynamic network slimming regime, named Dynamic Slimmable Network (DS-Net), which aims to achieve good hardware-efficiency via dynamically adjusting filter numbers of networks at test time with respect to different inputs, while keeping filters stored statically and contiguously in hardware to prevent the extra burden. Our DS-Net is empowered with the ability of dynamic inference by the proposed double-headed dynamic gate that comprises an attention head and a slimming head to predictively adjust network width with negligible extra computation cost. To ensure generality of each candidate architecture and the fairness of gate, we propose a disentangled two-stage training scheme inspired by one-shot NAS. In the first stage, a novel training technique for weight-sharing networks named In-place Ensemble Bootstrapping is proposed to improve the supernet training efficacy. In the second stage, Sandwich Gate Sparsification is proposed to assist the gate training by identifying easy and hard samples in an online way. Extensive experiments demonstrate our DS-Net consistently outperforms its static counterparts as well as state-of-the-art static and dynamic model compression methods by a large margin (up to 5.9%). Typically, DS-Net achieves 2-4x computation reduction and 1.62x real-world acceleration over ResNet-50 and MobileNet with minimal accuracy drops on ImageNet. Code release: https://github.com/changlin31/DS-Net .

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