利用联合增强型 SwinT 和 CNN 在学习图像压缩中建立精确的熵模型

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Dongjian Yang, Xiaopeng Fan, Xiandong Meng, Debin Zhao
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引用次数: 0

摘要

最近,学习图像压缩(LIC)显示出巨大的研究潜力。现有的 LIC 方法大多基于 CNN 或变换器,或混合使用。然而,由于 CNN 的卷积核大小有限,而变换器则采用窗口分割来降低计算复杂度,因此这些 LIC 方法的全局注意力性能都有一定程度的下降。这就产生了以下两个问题:(1)由于全局建模不足,主自动编码器(AE)和超自动编码器(hyper AE)表现出有限的变换能力,这对提高粗粒度熵模型的精度带来了挑战。(2) 由于全局建模能力较弱,细粒度熵模型难以自适应地利用更大范围的上下文。本文提出了联合增强型swin transformer(SwinT)和 CNN 的 LIC,以提高熵模型的精度。该方法的关键在于,我们在保持可接受的计算复杂度的同时,通过引入邻域窗口注意增强了 SwinT 的全局建模能力,并结合了 CNN 的局部建模能力,形成了增强 SwinT 和 CNN 块(ESTCB)。具体来说,我们基于 ESTCB 重构了 LIC 的主 AE 和超 AE,增强了它们的全局变换能力,从而得到了更精确的粗粒度熵模型。此外,我们还将 ESTCB 与棋盘式掩码和信道自回归模型相结合,建立了空间信道细粒度熵模型,扩大了 LIC 自适应参考上下文的范围。综合实验证明,与现有的 LIC 模型相比,我们提出的方法实现了最先进的速率失真性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Accurate entropy modeling in learned image compression with joint enchanced SwinT and CNN

Accurate entropy modeling in learned image compression with joint enchanced SwinT and CNN

Recently, learned image compression (LIC) has shown significant research potential. Most existing LIC methods are CNN-based or transformer-based or mixed. However, these LIC methods suffer from a certain degree of degradation in global attention performance, as CNN has limited-sized convolution kernels while window partitioning is applied to reduce computational complexity in transformer. This gives rise to the following two issues: (1) The main autoencoder (AE) and hyper AE exhibit limited transformation capabilities due to insufficient global modeling, making it challenging to improve the accuracy of coarse-grained entropy model. (2) The fine-grained entropy model struggles to adaptively utilize a larger range of contexts, because of weaker global modeling capability. In this paper, we propose the LIC with joint enhanced swin transformer (SwinT) and CNN to improve the entropy modeling accuracy. The key in the proposed method is that we enhance the global modeling ability of SwinT by introducing neighborhood window attention while maintaining an acceptable computational complexity and combines the local modeling ability of CNN to form the enhanced SwinT and CNN block (ESTCB). Specifically, we reconstruct the main AE and hyper AE of LIC based on ESTCB, enhancing their global transformation capabilities and resulting in a more accurate coarse-grained entropy model. Besides, we combine ESTCB with the checkerboard mask and the channel autoregressive model to develop a spatial then channel fine-grained entropy model, expanding the scope of LIC adaptive reference contexts. Comprehensive experiments demonstrate that our proposed method achieves state-of-the-art rate-distortion performance compared to existing LIC models.

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CiteScore
7.20
自引率
4.30%
发文量
567
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