论文标题
一种新颖的视频显着对象检测方法,通过半监督运动质量感知
A Novel Video Salient Object Detection Method via Semi-supervised Motion Quality Perception
论文作者
论文摘要
以前的视频显着对象检测(VSOD)方法主要集中于设计精美的网络以提高性能。但是,随着最近深度学习技术发展的速度,仅通过精美的网络预测另一个突破可能会变得越来越困难。为此,本文提出了一种通用学习方案,以对所有最新方法(SOTA)方法进行进一步的3 \%绩效提高。我们方法的主要亮点是,我们将“运动质量”求助---一个全新的概念,从原始测试集中选择一组视频框架来构建新的训练集。此新训练集中的选定帧应包含高质量的运动,其中显着对象将有很大的可能性可以通过“目标sota方法”成功检测到我们想要改进的对象。因此,我们可以使用这项新的培训集开始新的网络培训,从而实现重大的性能提高。在这项新的回合训练中,目标SOTA方法的VSOD结果将作为伪训练目标应用。我们的新颖学习计划简单而有效,其半监督方法可能具有巨大的潜力,可以激发VSOD社区。
Previous video salient object detection (VSOD) approaches have mainly focused on designing fancy networks to achieve their performance improvements. However, with the slow-down in development of deep learning techniques recently, it may become more and more difficult to anticipate another breakthrough via fancy networks solely. To this end, this paper proposes a universal learning scheme to get a further 3\% performance improvement for all state-of-the-art (SOTA) methods. The major highlight of our method is that we resort the "motion quality"---a brand new concept, to select a sub-group of video frames from the original testing set to construct a new training set. The selected frames in this new training set should all contain high-quality motions, in which the salient objects will have large probability to be successfully detected by the "target SOTA method"---the one we want to improve. Consequently, we can achieve a significant performance improvement by using this new training set to start a new round of network training. During this new round training, the VSOD results of the target SOTA method will be applied as the pseudo training objectives. Our novel learning scheme is simple yet effective, and its semi-supervised methodology may have large potential to inspire the VSOD community in the future.