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Keyframe extraction using Pearson correlation coefficient and color moments

机译:使用Pearson相关系数和颜色时刻的关键帧提取

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Keyframe extraction plays a significant role in wide variety of real-time video processing applications such as video summarization, video management and retrieval, etc. A keyframe captures the whole content of its shot and does not contain any redundant information. The keyframe extraction algorithms are facing challenges due to different visual characteristics in videos of different categories. Therefore, a single feature is not enough to capture visual characteristics of a variety of videos. In order to tackle this problem, we propose an approach of keyframe extraction that uses hybridization of features. In the present article, we propose a novel shot detection-based keyframe extraction algorithm based on combination of two features: one is Pearson correlation coefficient (PCC) and other is color moments (CM). The linear transformation invariance property of PCC facilitates the proposed algorithm to work well under varying lighting conditions. On the other hand, the scale and rotation invariance properties of color moments are beneficial for representation of complex objects that may be present in different poses and orientations. These sustained reasons support the combination of these two features, which brings significant benefits for keyframe extraction in the proposed method. The proposed method detects shot boundaries by employing combo feature set (PCC and CM). From each shot, the frame with highest mean and standard deviation is selected as keyframe. Furthermore, another important contribution is that we developed a new dataset by collecting the videos of different categories such as movies, news, serials, animations and personal interviews and made it available online. The proposed method is experimented on three datasets: two publicly available datasets and one dataset developed by us. The performance of the proposed method on these datasets has been evaluated on the basis of different evaluation parameters: figure of merit, detection percentage, accuracy, and missing factor. Principal advantage of proposed work lies in the fact that it is capable to detect both the abrupt and gradual shot transitions. In real-time videos, it is common to have abrupt and small transitions. The experimental results show the superior performance of the proposed method over the other state-of-the-art methods.
机译:关键帧提取在各种实时视频处理应用程序中起着重要作用,例如视频摘要,视频管理和检索等。关键帧捕获其拍摄的整个内容,并且不包含任何冗余信息。关键帧提取算法由于不同类别的视频中的不同视觉特征而面临挑战。因此,单个特征不足以捕获各种视频的视觉特征。为了解决这个问题,我们提出了一种使用特征杂交的关键帧提取方法。在本文中,我们提出了一种基于两个特征的组合的新型拍摄检测的关键帧提取算法:一个是Pearson相关系数(PCC),其他是颜色时刻(cm)。 PCC的线性变换不变性属性有助于该算法在不同的照明条件下运行良好。另一方面,颜色矩的比例和旋转不变性属性对于可以以不同的姿势和方向存在的复杂对象的表示是有益的。这些持续的原因支持这两个特征的组合,这为拟议方法带来了关键帧提取的显着益处。所提出的方法通过采用组合特征集(PCC和CM)来检测截图边界。从每个镜头,选择具有最高均值和标准偏差的帧作为关键帧。此外,另一个重要贡献是我们通过收集电影,新闻,序列,动画和个人访谈等不同类别的视频开发了一个新的数据集,并使其在线提供。所提出的方法在三个数据集中进行了实验:两个公开可用的数据集和由我们开发的一个数据集。在不同的评估参数的基础上评估了在这些数据集上的所提出的方法的性能:优点,检测百分比,准确性和缺失因素的数字。拟议工作的主要优势在于它能够检测到突然和渐进的射击过渡。在实时视频中,突然和过渡的常见是常见的。实验结果表明,在其他最先进的方法中提出的方法的优越性。

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