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Event Detection at Vehicle Location Points using Spatial Time Invariant Model

机译:使用空间时不变模型的车辆定位点事件检测

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The localization and recognition of moving objects from single monocular intensity images has been a popular issue in image analysis and computer vision over many years. It is also one of the fundamental crisis in model based vehicle localization and recognition. The recently used scheme is model based on simple object recognition and localization of road vehicles using the position and orientation of vehicle image data. But the drawback of the approach is that the shape of the vehicle and its pose varies in multiple junction coordination, the model based recognition is an inefficient one. To overcome the issues, our first work implemented a surveillance image object recognition and localization using improved local gradient model. The vehicle-object shape recognition and pose recovery in the traffic junction is carried out for varied traffic densities. But the drawback of the approach is that it considers only the vehicle shape and pose variations in the road network and does not discuss about the occurrences of event at the vehicle junction points. Now we have to focus on the process of occurrences of event like accident met at traffic junctions. For this, in this work, spatial time invariant model is introduced to measure the event occurrences of the vehicle traffic location points. The event which has been takes place is recorded as the reference context for standardization of the traffic modality. With the reference context, the detector can easily find out the reason of the event takes place. An experimental evaluation is carried out to estimate the performance of the proposed event detection at vehicle location points using spatial time invariant model (EDSTIM) in terms of spatial events, multiple time scales, traffic controlling time and compared with an existing model based on simple object recognition and localization and the previous work Surveillance of Vehicle Object Recognition and Localization.
机译:多年以来,来自单眼强度图像的运动对象的定位和识别一直是图像分析和计算机视觉中的热门问题。这也是基于模型的车辆定位和识别的基本危机之一。最近使用的方案是基于简单目标识别以及使用车辆图像数据的位置和方向对道路车辆进行定位的模型。但是这种方法的缺点是车辆的形状及其姿态在多路口协调中会发生变化,基于模型的识别是一种低效的识别方法。为了克服这些问题,我们的第一项工作是使用改进的局部梯度模型实现了监视图像对象的识别和定位。针对不同的交通密度,在交通枢纽中进行车体形状识别和姿态恢复。但是该方法的缺点是,它仅考虑道路网络中的车辆形状和姿态变化,而没有讨论在车辆交汇点发生事件的情况。现在,我们必须关注交通路口遇到的事件(如事故)的发生过程。为此,在这项工作中,引入了空间时不变模型来测量车辆交通位置点的事件发生。将已经发生的事件记录为交通方式标准化的参考上下文。通过参考上下文,检测器可以轻松找出事件发生的原因。使用空间时不变模型(EDSTIM)在空间事件,多个时标,交通控制时间方面进行了实验评估,以估计拟议事件检测在车辆位置点的性能,并与基于简单对象的现有模型进行比较识别和定位以及以前的工作车辆对象识别和定位监控。

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