基于风格的生成对抗网络的进化通道修剪。

IF 6.4
Yixia Zhang, Ferrante Neri, Xilu Wang, Pengcheng Jiang, Yu Xue
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引用次数: 0

摘要

生成对抗网络(gan)在高质量图像合成方面取得了显著的成功,StyleGAN及其后继产品StyleGAN2在真实感和对生成特征的控制方面实现了最先进的性能。然而,大量的参数和每秒高浮点运算(FLOPs)阻碍了实时应用和可扩展性,为在资源受限的环境(如边缘设备和移动平台)中部署这些模型带来了挑战。为了解决这个问题,我们提出了StyleGANs的进化通道修剪(ep -StyleGANs),这是一种利用进化算法压缩StyleGAN和StyleGAN2的新算法,同时保持有竞争力的图像质量。我们的方法将修剪配置编码为模型卷积通道上的二进制掩码,并通过选择、交叉和突变迭代地改进它们。通过整合精心设计的适应度函数,平衡模型复杂性和生成质量,ECP-StyleGANs识别出最佳修剪的架构,在不影响视觉保真度的情况下减少计算需求,实现大约4倍的FLOPs和参数减少,同时保持视觉保真度,与原始未修剪的模型相比,FID (fr起始距离)仅略有增加。本研究应被解释为将生成式人工智能修剪问题作为多目标优化任务进行制定和管理的初步步骤,旨在增强模型效率和图像质量之间的权衡,从而使大型深度模型更容易用于边缘设备和资源受限环境等现实应用。源代码将可用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Channel Pruning for Style-Based Generative Adversarial Networks.

Generative Adversarial Networks (GANs) have demonstrated remarkable success in high-quality image synthesis, with StyleGAN and its successor, StyleGAN2, achieving state-of-the-art performance in terms of realism and control over generated features. However, the large number of parameters and high floating-point operations per second (FLOPs) hinder real-time applications and scalability, posing challenges for deploying these models in resource-constrained environments such as edge devices and mobile platforms. To address this issue, we propose Evolutionary Channel Pruning for StyleGANs (ECP-StyleGANs), a novel algorithm that leverages evolutionary algorithms to compress StyleGAN and StyleGAN2 while maintaining competitive image quality. Our approach encodes pruning configurations as binary masks on the model's convolutional channels and iteratively refines them through selection, crossover, and mutation. By integrating carefully designed fitness functions that balance model complexity and generation quality, ECP-StyleGANs identifies optimally pruned architectures that reduce computational demands without compromising visual fidelity, achieving approximately a 4 × reduction in FLOPs and parameters, while maintaining visual fidelity with only a slight increase in FID (Fréchet Inception Distance) compared to the original un-pruned model. This study should be interpreted as a preliminary step towards the formulation and management of the generative AI pruning problem as a multi-objective optimisation task, aimed at enhancing the trade-off between model efficiency and image quality, thereby making large deep models more accessible for real-world applications such as edge devices and resource-constrained environments. Source codes will be available.

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