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Car detection in sequences of images of urban environments using mixture of deformable part models

机译:混合使用可变形零件模型的城市环境图像序列中的汽车检测

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摘要

Sequences of images from urban environments are increasing in number as well as their potential applications. They are being taken (from stationary and dynamic cameras) for applications such as traffic surveillance, or for autonomous driving, or for security applications, etc. The literature presents several different approaches for each application. For object detection, a common disadvantage is that they only consider images obtained from a stationary, or a dynamic, camera to train the detectors. This can lead to poor performances when the detectors are used in sequences of images from different types of cameras, or even a cross camera testing, e.g., training with data from a dynamic camera and testing with sequences from a stationary camera. Another disadvantage is that some approaches use several models for each point of view of the car, generating a lot of models and, in some cases, one classifier for each point of view. In this paper, we approach the problem of car detection using a model of the class car created with a data-set of static images and we use the model to detect cars in sequence of images that were collected from static and dynamic cameras, i.e., in a totally different setting than used for training. The creation of the model is done by an off-line learning phase, using an image database of cars in several points of view, PASCAL 2007. The model is based on a mixture of deformable part models that have been shown to give state of the art results for detection in static images. The results show that the proposed approach achieves better results than the state of the art approaches in sequence of images obtained from a stationary, or a dynamic camera. Another contribution of our paper is a ground truth of a large sequence of images available in the Internet.
机译:来自城市环境的图像序列及其潜在应用的数量正在增加。它们(从固定式和动态相机中)用于交通监控,自动驾驶或安全性应用等。文献为每种应用提出了几种不同的方法。对于物体检测,一个共同的缺点是它们仅考虑从固定或动态相机获得的图像来训练检测器。当将检测器用于来自不同类型摄像机的图像序列中时,甚至进行跨摄像机测试时,例如使用动态摄像机的数据进行训练并使用固定摄像机的序列进行测试时,这可能导致性能不佳。另一个缺点是,某些方法针对汽车的每个角度使用多个模型,从而生成大量模型,并且在某些情况下,针对每个角度使用一个分类器。在本文中,我们使用具有静态图像数据集的汽车类别模型来解决汽车检测问题,并使用该模型按顺序从静态和动态相机收集的图像中检测汽车,即与训练所用的环境完全不同。该模型的创建是通过离线学习阶段完成的,使用了多个角度的汽车图像数据库,即PASCAL2007。该模型基于可变形零件模型的混合,已显示出零件的状态。静态图像检测中的艺术效果。结果表明,从固定或动态相机获得的图像序列中,所提出的方法比现有技术方法具有更好的结果。我们论文的另一个贡献是互联网上大量图像的基本事实。

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