Panagiotis Giannakeris, V. Kaltsa, Konstantinos Avgerinakis, A. Briassouli, S. Vrochidis, Y. Kompatsiaris
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引用次数: 26
摘要
受自动驾驶、车辆和交通运输日益增长的行业趋势的推动,我们专注于开发一个交通分析框架,用于自动利用与交通应用相关的大量可用数据。我们提出了一种基于深度CNN特征的协同检测和跟踪算法,用于视频监控镜头中车辆轨迹的检索,该算法最终用于两种独立的交通分析模式:(a)基于最先进的全自动相机校准算法的车速估计;(b)使用检测到的车辆的鲁棒光流描述符和时空视觉量的Fisher向量表示来检测场景中可能的异常事件。最后,我们在NVIDIA AI CITY挑战评估数据集中测量了我们提出的方法的性能。
Speed Estimation and Abnormality Detection from Surveillance Cameras
Motivated by the increasing industry trends towards autonomous driving, vehicles, and transportation we focus on developing a traffic analysis framework for the automatic exploitation of a large pool of available data relative to traffic applications. We propose a cooperative detection and tracking algorithm for the retrieval of vehicle trajectories in video surveillance footage based on deep CNN features that is ultimately used for two separate traffic analysis modalities: (a) vehicle speed estimation based on a state of the art fully automatic camera calibration algorithm and (b) the detection of possibly abnormal events in the scene using robust optical flow descriptors of the detected vehicles and Fisher vector representations of spatiotemporal visual volumes. Finally we measure the performance of our proposed methods in the NVIDIA AI CITY challenge evaluation dataset.