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Classification-based adaptive search algorithm for video motion estimation.

机译:基于分类的自适应搜索算法,用于视频运动估计。

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A video sequence consists of a series of frames. In order to compress the video for efficient storage and transmission, the temporal redundancy among adjacent frames must be exploited. A frame is selected as reference frame and subsequent frames are predicted from the reference frame using a technique known as motion estimation. Real videos contain a mixture of motions with slow and fast contents. Among block matching motion estimation algorithms, the full search algorithm is known for its superiority in the performance over other matching techniques. However, this method is computationally very extensive. Several fast block matching algorithms (FBMAs) have been proposed in the literature with the aim to reduce computational costs while maintaining desired quality performance, but all these methods are considered to be sub-optimal. No fixed fast block matching algorithm can efficiently remove temporal redundancy of video sequences with wide motion contents. Adaptive fast block matching algorithm, called classification based adaptive search (CBAS) has been proposed. A Bayes classifier is applied to classify the motions into slow and fast categories. Accordingly, appropriate search strategy is applied for each class. The algorithm switches between different search patterns according to the content of motions within video frames. The proposed technique outperforms conventional stand-alone fast block matching methods in terms of both peak signal to noise ratio (PSNR) and computational complexity. In addition, a new hierarchical method for detecting and classifying shot boundaries in video sequences is proposed which is based on information theoretic classification (ITC). ITC relies on likelihood of class label transmission of a data point to the data points in its vicinity. ITC focuses on maximizing the global transmission of true class labels and classify the frames into classes of cuts and non-cuts. Applying the same rule, the non-cut frames are also classified into two categories of arbitrary shot frames and gradual transition frames. CBAS is applied on the proposed shot detection method to handle camera or object motions. Experimental evidence demonstrates that our method can detect shot breaks with high accuracy.
机译:视频序列由一系列帧组成。为了压缩视频以进行有效的存储和传输,必须利用相邻帧之间的时间冗余。选择帧作为参考帧,并使用称为运动估计的技术从参考帧中预测后续帧。真实视频包含具有慢速和快速内容的混合运动。在块匹配运动估计算法中,全搜索算法因其性能优于其他匹配技术而闻名。但是,该方法在计算上非常广泛。文献中已经提出了几种快速块匹配算法(FBMA),目的是在降低计算成本的同时保持所需的质量性能,但是所有这些方法都被认为是次优的。没有固定的快速块匹配算法可以有效地去除具有宽运动内容的视频序列的时间冗余。提出了一种自适应快速块匹配算法,称为基于分类的自适应搜索(CBAS)。使用贝叶斯分类器将运动分为慢速和快速类别。因此,将适当的搜索策略应用于每个类别。该算法根据视频帧内运动的内容在不同的搜索模式之间切换。就峰值信噪比(PSNR)和计算复杂度而言,拟议的技术优于传统的独立快速块匹配方法。另外,提出了一种基于信息理论分类(ITC)的视频序列镜头边界检测和分类的新方法。 ITC依赖于数据点到其附近数据点的类标签传输的可能性。 ITC致力于最大程度地在全球范围内传递真实的类别标签,并将框架分为切割和非切割类别。应用相同的规则,非剪切帧也分为任意镜头帧和渐进过渡帧两类。 CBAS应用于建议的镜头检测方法,以处理相机或物体的运动。实验证据表明,我们的方法可以高精度检测击球。

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