Video Quality Enhancement Using Deep Learning-Based Prediction Models for Quantized DCT Coefficients in MPEG I-frames

A. Busson, P. Mendes, D. D. S. Moraes, Á. Veiga, Alan Livio Vasconcelos Guedes, S. Colcher
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引用次数: 1

Abstract

Recent works have successfully applied some types of Convolutional Neural Networks (CNNs) to reduce the noticeable distortion resulting from the lossy JPEG/MPEG compression technique. Most of them are built upon the processing made on the spatial domain. In this work, we propose a MPEG video decoder that is purely based on the frequency-to-frequency domain: it reads the quantized DCT coefficients received from a low-quality I-frames bitstream and, using a deep learning-based model, predicts the missing coefficients in order to recompose the same frames with enhanced quality. In experiments with a video dataset, our best model was able to improve from frames with quantized DCT coefficients corresponding to a Quality Factor (QF) of 10 to enhanced quality frames with QF slightly near to 20.
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基于深度学习的MPEG i帧量化DCT系数预测模型的视频质量增强
最近的工作已经成功地应用了一些类型的卷积神经网络(cnn)来减少由有损JPEG/MPEG压缩技术引起的明显失真。它们大多建立在对空间域进行处理的基础上。在这项工作中,我们提出了一种纯粹基于频域的MPEG视频解码器:它读取从低质量i帧比特流接收的量化DCT系数,并使用基于深度学习的模型,预测缺失系数,以便以增强的质量重新组合相同的帧。在视频数据集的实验中,我们的最佳模型能够从量化DCT系数对应于质量因子(QF)为10的帧改进到QF略接近20的增强质量帧。
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