论文标题
fmodetect:快速移动对象的可靠检测
FMODetect: Robust Detection of Fast Moving Objects
论文作者
论文摘要
我们建议对快速移动对象检测的第一种基于学习的方法。此类对象高度模糊,并在一个视频框架内移动大距离。快速移动的对象与脱毛和垫片问题相关联,也称为脱蓝色。我们表明,将排泄物分离为连续的垫片和脱毛,允许实现实时性能,即加速顺序,从而实现新的应用程序。提出的方法通过从合成数据中学习,将快速移动的对象视为截断距离函数的截断距离函数。为了进行尖锐的外观估计和准确的轨迹估计,我们提出了一个垫子和拟合网络,该网络估算没有背景的模糊外观,然后是基于能量最小化的脱毛。最先进的方法在召回,精度,轨迹估计和清晰的外观重建方面表现出色。与其他方法相比,诸如脱蓝色的方法相比,推断的速度更快,允许在大型视频集合中进行实时快速移动对象检测和检索等应用。
We propose the first learning-based approach for fast moving objects detection. Such objects are highly blurred and move over large distances within one video frame. Fast moving objects are associated with a deblurring and matting problem, also called deblatting. We show that the separation of deblatting into consecutive matting and deblurring allows achieving real-time performance, i.e. an order of magnitude speed-up, and thus enabling new classes of application. The proposed method detects fast moving objects as a truncated distance function to the trajectory by learning from synthetic data. For the sharp appearance estimation and accurate trajectory estimation, we propose a matting and fitting network that estimates the blurred appearance without background, followed by an energy minimization based deblurring. The state-of-the-art methods are outperformed in terms of recall, precision, trajectory estimation, and sharp appearance reconstruction. Compared to other methods, such as deblatting, the inference is of several orders of magnitude faster and allows applications such as real-time fast moving object detection and retrieval in large video collections.