论文标题
估算花样滑冰视频中突出显示检测的眨眼概率
Estimating Blink Probability for Highlight Detection in Figure Skating Videos
论文作者
论文摘要
体育视频中的重点检测具有广泛的收视率和巨大的商业潜力。因此,必须以高的时间准确性来检测更适合人类利益的突出显示场景。由于人们本能地在引起注意事件中本能地抑制了眨眼,并同步在视频中的注意点上产生眨眼,因此瞬时眨眼率可以用作高度准确的人类利益的时间指标。因此,在这项研究中,我们提出了一种基于眨眼速率的新型自动突出显示方法。该方法训练一个一维卷积网络(1D-CNN),以评估每个视频框架的眨眼率,从花样滑冰视频的时空姿势特征。实验表明,该方法成功地估算了94%的视频片段中的眨眼率,并以高精度预测了跳跃事件周围眨眼率的时间变化。此外,该方法不仅检测到代表性的运动动作,还检测到花样滑冰表演作为关键帧的独特艺术表达。这表明,基于眨眼的监督学习方法使高智能率突出显示了与人类敏感性更匹配的检测。
Highlight detection in sports videos has a broad viewership and huge commercial potential. It is thus imperative to detect highlight scenes more suitably for human interest with high temporal accuracy. Since people instinctively suppress blinks during attention-grabbing events and synchronously generate blinks at attention break points in videos, the instantaneous blink rate can be utilized as a highly accurate temporal indicator of human interest. Therefore, in this study, we propose a novel, automatic highlight detection method based on the blink rate. The method trains a one-dimensional convolution network (1D-CNN) to assess blink rates at each video frame from the spatio-temporal pose features of figure skating videos. Experiments show that the method successfully estimates the blink rate in 94% of the video clips and predicts the temporal change in the blink rate around a jump event with high accuracy. Moreover, the method detects not only the representative athletic action, but also the distinctive artistic expression of figure skating performance as key frames. This suggests that the blink-rate-based supervised learning approach enables high-accuracy highlight detection that more closely matches human sensibility.