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Model Update Particle Filter for Multiple Objects Detection and Tracking

机译:用于多目标检测和跟踪的模型更新粒子滤波器

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Multiple objects tracking is a challenging task. This article presents an algorithm which can detect and track multiple objects, and update target model automatically. The contributions of this paper as follow: Firstly, we use color histogram(HC) and histogram of orientated gradients(HOG) to represent the objects, model update is realized under the frame of kalman filter and gaussian model, secondly we use Gaussian Mixture Model(GMM) and Bhattacharyya distance to detect object appearance. Particle filter with combined features and model update mechanism can improve tracking effects. Experiments on video sequences demonstrate that multiple objects tracking based on improved algorithm have good performance.
机译:跟踪多个对象是一项艰巨的任务。本文提出了一种可以检测和跟踪多个对象并自动更新目标模型的算法。本文的贡献如下:首先,使用颜色直方图(HC)和定向梯度直方图(HOG)来表示对象,在卡尔曼滤波器和高斯模型的框架下实现模型更新,其次使用高斯混合模型。 (GMM)和Bhattacharyya距离来检测物体的外观。结合了特征和模型更新机制的粒子过滤器可以改善跟踪效果。视频序列实验表明,基于改进算法的多目标跟踪具有良好的性能。

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