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Efficient Implementation of Neural Network Deinterlacing

机译:神经网络去隔行的有效实现

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摘要

Interlaced scanning has been widely used in most broadcasting systems. However, there are some undesirable artifacts such as jagged patterns, flickering, and line twitters. Moreover, most recent TV monitors utilize flat panel display technologies such as LCD or PDP monitors and these monitors require progressive formats. Consequently, the conversion of interlaced video into progressive video is required in many applications and a number of deinterlacing methods have been proposed. Recently deinterlacing methods based on neural network have been proposed with good results. On the other hand, with high resolution video contents such as HDTV, the amount of video data to be processed is very large. As a result, the processing time and hardware complexity become an important issue. In this paper, we propose an efficient implementation of neural network deinterlacing using polynomial approximation of the sigmoid function. Experimental results show that these approximations provide equivalent performance with a considerable reduction of complexity. This implementation of neural network deinterlacing can be efficiently incorporated in HW implementation.
机译:隔行扫描已在大多数广播系统中广泛使用。但是,存在一些不希望的伪像,例如锯齿状图案,闪烁和线条鸣叫。而且,最新的电视监视器使用诸如LCD或PDP监视器之类的平板显示技术,并且这些监视器需要逐行格式。因此,在许多应用中需要将隔行视频转换为逐行视频,并且已经提出了许多去隔行方法。近年来,已经提出了基于神经网络的去隔行方法,具有良好的效果。另一方面,对于诸如HDTV的高分辨率视频内容,要处理的视频数据量非常大。结果,处理时间和硬件复杂度成为重要的问题。在本文中,我们提出了一种使用S形函数的多项式逼近的神经网络去隔行的有效实现。实验结果表明,这些近似值提供了等效的性能,并且大大降低了复杂度。神经网络去隔行的这种实现可以有效地结合到硬件实现中。

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