Image compression is one of the essential methods of image processing. Its most prominent advantage is the significant reduction of image size allowing for more efficient storage and transfer. However, lossy compression is associated with the loss of some image details in favor of reducing its size. In compressed images, the deficiencies are manifested by noticeable defects in the form of artifacts; the most common are block artifacts, ringing effect, or blur. In this article, we propose three models of fully convolutional networks with different configurations and examine their abilities in reducing compression artifacts. In the experiments, we research the extent to which the results are improved for models that will process the image in a similar way to the compression algorithm, and whether the initialization with predefined filters would allow for better image reconstruction than developed solely during learning.
翻译:图像压缩是图像处理的基本方法之一。 其最显著的优势在于图像大小显著缩小, 从而可以更有效地存储和传输。 然而, 丢失压缩与一些图像细节的丢失相关, 从而有利于缩小图像的大小。 在压缩图像中, 缺陷表现为人工制品形式的明显缺陷; 最常见的是块状工艺品、 铃声效果或模糊。 在文章中, 我们提出了三种全变式网络模式, 其配置不同, 并检查它们减少压缩工艺品的能力。 在实验中, 我们研究这些结果在多大程度上得到了改进, 以类似压缩算法的方式处理图像的模型, 以及使用预设过滤器的初始化是否比在学习期间开发的更好。