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Reducing blocking artifacts in JPEG-compressed images using an adaptive neural network-based algorithm

机译:使用基于自适应神经网络的算法减少JPEG压缩图像中的块状伪像

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摘要

It is well known that at low bit rates, a block-based discrete cosine transform compressed image or video can exhibit visually annoying blocking and ringing artifacts. Low-pass filters are very effective in reducing the blocking artifacts in smooth areas. However, it is difficult to achieve a satisfactory result for ringing artifact removal using only an adaptive filtering scheme. This paper presents a neural network-based deblocking method that is effective on various types of images. The first step of this scheme is block classification that identifies each 8 × 8 block as one of the three types: PLAIN, EDGE or TEXTURE, based on its statistical characteristics. The next step is the reduction in the blocking and ringing artifacts by applying three trained layered neural networks to three different types of image areas. Comparing this method with other algorithms, the simulation results clearly show that the proposed algorithm is very powerful in effectively reducing both blocking and ringing artifacts while preserving the true edge and textural information and thus significantly improving the visual quality of the blocking images or videos.
机译:众所周知,在低比特率下,基于块的离散余弦变换压缩图像或视频会表现出令人讨厌的阻塞和振铃伪影。低通滤波器在减少平滑区域的阻塞伪像方面非常有效。然而,仅使用自适应滤波方案难以实现令人满意的结果以消除振铃伪影。本文提出了一种基于神经网络的解块方法,该方法对各种类型的图像均有效。该方案的第一步是块分类,根据其统计特征将每个8×8块识别为PLAIN,EDGE或TEXTURE这三种类型之一。下一步是通过将三个训练过的分层神经网络应用于三种不同类型的图像区域来减少阻塞和振铃伪影。与其他算法相比,仿真结果清楚地表明,该算法在有效减少块状和环形伪影的同时,还能保留真实的边缘和纹理信息,从而显着提高了块状图像或视频的视觉质量。

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