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Matching of video objects taken from different camera views by using multi-feature fusion and evolutionary learning methods

机译:通过使用多特征融合和进化学习方法,从不同相机视图中取出的视频对象的匹配

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Now a day the identifying of an object by using more than one camera with different views is very necessary. The images or video capture by these cameras should be non-overlapped. Therefore, to capture the specific object in the wide area video surveillance it is very difficult task. Most of the information is lost due to the different cameras and movement of the object. Generally the visual information is to get from the cameras. This paper presents a novel algorithm which is used to obtain the different features of an object and compare these features to the appearance features of individual objects. Firstly, the representation of a Competitive Major Feature Histogram Fusion (CMFH) is used to find the appearance of model which helps to characterize the potentially of the matching objects. In front of different cameras, the appearances of an object can change over time to time and hence it is necessary to continuous update these models. For this purpose in this paper modified Incremental General Multi Category Support Vector Machine (IGMSVM) algorithm is present. The IGMSVM algorithm updates the models online and matches the online objects with the objects obtained from camera by using the classification method. To calculate accurate classification of a model, small amount of samples of an object are required. In the experimental results there are different tests are performed on different database where an objects images are taken at different view point, illumination and the poses. The proposed algorithm is capable to obtain correct match of typical object.
机译:现在,一天通过使用具有不同视图的多个相机来识别物体是非常必要的。这些摄像机的图像或视频捕获应不重叠。因此,要在广域视频监控中捕获特定对象,这是一项非常困难的任务。由于对象的相机和移动,大多数信息都丢失。通常,视觉信息是从摄像机获得。本文介绍了一种新颖算法,用于获得对象的不同特征,并将这些特征与各个对象的外观特征进行比较。首先,竞争主要特征直方图融合(CMFH)的表示用于找到模型的外观,有助于表征匹配对象的潜在。在不同的摄像机前面,物体的外观可以随时间变化,因此需要连续更新这些模型。为此目的,在本文中,修改了增量多类多类支持向量机(IGMSVM)算法存在。 IGMSVM算法在线更新模型,并将在线对象与通过使用分类方法使用摄像机获得的对象匹配。为了计算模型的准确分类,需要少量对象的样本。在实验结果中,在不同的数据库上执行不同的测试,其中对象图像在不同的视点,照明和姿势处拍摄。所提出的算法能够获得典型对象的正确匹配。

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