通过建模神经训练动力学加速学习图像压缩。

Yichi Zhang, Zhihao Duan, Yuning Huang, Fengqing Zhu
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引用次数: 0

摘要

随着学习图像压缩(LIC)方法对计算量的要求越来越高,提高其训练效率至关重要。本文通过对神经训练动力学模型的建模,在加速LIC方法的训练方面迈出了一步。我们首先提出了一种灵敏度感知的真假嵌入训练机制(STDET),该机制将LIC模型参数聚类到几个独立的模式中,其中参数表示为同一模式内参考参数的仿射变换。通过进一步利用训练过程中稳定的模内相关性和参数敏感性,我们逐步嵌入非参考参数,减少可训练参数的数量。此外,我们结合了采样-移动平均(SMA)技术,从随机梯度下降(SGD)训练中插值采样权重以获得移动平均权重,确保平滑的时间行为并最小化训练状态方差。总的来说,我们的方法在不牺牲模型性能的情况下显著降低了训练空间维度和可训练参数的数量,从而加速了模型的收敛。我们还对有噪声的二次模型进行了理论分析,表明该方法比标准SGD方法获得了更低的训练方差。我们的方法为进一步为低收入国家开发有效的培训方法提供了宝贵的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Learned Image Compression Through Modeling Neural Training Dynamics.

As learned image compression (LIC) methods become increasingly computationally demanding, enhancing their training efficiency is crucial. This paper takes a step forward in accelerating the training of LIC methods by modeling the neural training dynamics. We first propose a Sensitivity-aware True and Dummy Embedding Training mechanism (STDET) that clusters LIC model parameters into few separate modes where parameters are expressed as affine transformations of reference parameters within the same mode. By further utilizing the stable intra-mode correlations throughout training and parameter sensitivities, we gradually embed non-reference parameters, reducing the number of trainable parameters. Additionally, we incorporate a Sampling-then-Moving Average (SMA) technique, interpolating sampled weights from stochastic gradient descent (SGD) training to obtain the moving average weights, ensuring smooth temporal behavior and minimizing training state variances. Overall, our method significantly reduces training space dimensions and the number of trainable parameters without sacrificing model performance, thus accelerating model convergence. We also provide a theoretical analysis on the Noisy quadratic model, showing that the proposed method achieves a lower training variance than standard SGD. Our approach offers valuable insights for further developing efficient training methods for LICs.

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