基于边缘去噪的图像压缩

Ryugo Morita, Hitoshi Nishimura, Ko Watanabe, Andreas Dengel, Jinjia Zhou
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引用次数: 0

摘要

近年来,基于深度学习的图像压缩,特别是通过生成模型进行的压缩,已成为一个重要的研究领域。尽管取得了重大进展,但重建图像的清晰度和质量下降、模式崩溃导致的学习效率低下以及传输过程中的数据丢失等挑战依然存在。为了解决这些问题,我们提出了一种新颖的压缩模型,该模型将去噪步骤与扩散模型相结合,通过利用潜在空间的子信息(如边缘和深度)显著提高了图像重建的保真度。实证实验证明,与现有模型相比,我们的模型在图像质量和压缩效率方面取得了更优或相当的结果。值得注意的是,我们的模型通过引入边缘估计网络来保持重建图像的完整性,从而在部分图像丢失或噪声过大的情况下表现出色,为目前图像压缩的局限性提供了一种稳健的解决方案。
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Edge-based Denoising Image Compression
In recent years, deep learning-based image compression, particularly through generative models, has emerged as a pivotal area of research. Despite significant advancements, challenges such as diminished sharpness and quality in reconstructed images, learning inefficiencies due to mode collapse, and data loss during transmission persist. To address these issues, we propose a novel compression model that incorporates a denoising step with diffusion models, significantly enhancing image reconstruction fidelity by sub-information(e.g., edge and depth) from leveraging latent space. Empirical experiments demonstrate that our model achieves superior or comparable results in terms of image quality and compression efficiency when measured against the existing models. Notably, our model excels in scenarios of partial image loss or excessive noise by introducing an edge estimation network to preserve the integrity of reconstructed images, offering a robust solution to the current limitations of image compression.
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