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CONTENTS ADAPTIVE DEINTERLACING BASED ON LOCAL CONTENT CLASSIFICATION

机译:内容基于本地内容分类的自适应解扫描

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In contents adaptive deinterlacing methods, accurate contents classification is important to minimize deinterlacing artifacts. The adaptive dynamic range coding (ADRC) method is widely used for local video contents classification because it has low complexity. However, since the ADRC method coarsely classifies local video contents, its performance is rather limited. For accurate local video contents classification, we propose a modified ADRC (MADRC) method. While the ADRC method encodes each pixel using 1-bit, the proposed method encodes each pixel using 2-bits by dividing into more detailed intervals. Encoded bits are concatenated together to form a class. We compute vertical-temporal (VT) filters using the least square solution for each class classified by the MADRC method. These VT filters are obtained from progressive videos in advance. Then, we adaptively apply these VT filters to interlaced video based on the local video contents classification results. To evaluate the proposed method, we conducted experiments using 13 CIF progressive video sequences. Experimental results show that the proposed deinterlacing method showed 1-3 dB improvement in terms of PSNR compared to existing methods.
机译:在内容自适应去隔行方法中,准确的内容分类对于最小化去隔离伪影是重要的。自适应动态范围编码(ADRC)方法广泛用于本地视频内容分类,因为它具有较低的复杂性。但是,由于ADRC方法粗略分类本地视频内容,因此其性能相当有限。为了准确的本地视频内容分类,我们提出了一种修改的ADRC(Madrc)方法。虽然ADRC方法使用1位对每个像素进行编码,但是所提出的方法通过划分更详细的间隔来使用2比特编码每个像素。编码位连接在一起以形成类。我们使用MADRC方法分类的每个类的最小方形解决方案计算垂直时间(VT)滤波器。预先从渐进视频获得这些VT过滤器。然后,我们根据本地视频内容分类结果,自适应地将这些VT滤波器应用于交错视频。为了评估所提出的方法,我们使用13个CIF进行视频序列进行实验。实验结果表明,与现有方法相比,所提出的去隔离方法显示PSNR方面的1-3 dB改善。

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