首页> 外国专利> METHOD FOR RECOGNIZING AND TRACING PEDESTRIAN IN REAL TIME BY USING KALMAN FILTER AND CLUSTERING ALGORITHM BASED ON HOG CONTINUOUS METHOD

METHOD FOR RECOGNIZING AND TRACING PEDESTRIAN IN REAL TIME BY USING KALMAN FILTER AND CLUSTERING ALGORITHM BASED ON HOG CONTINUOUS METHOD

机译:基于猪连续法的卡尔曼滤波和聚类算法实时识别和追踪行人

摘要

A pedestrian recognition technique relates to a technique for searching for a pedestrian in an image and is widely applied for common security and monitoring such as alarming a risk by recognizing a person in the front, counting the number of persons passing by one point, keeping the safety of workers in a workspace, etc. A basic method in a current pedestrian detection technique is a histogram of oriented gradients (HOG) which maintains the best performance. However, a HOG algorithm has a disadvantage of being hardly applied in real time and being slow due to a large quantity of operation. The present invention relates to the pedestrian recognition technique through a camera which is installed on a vehicle. The proposed method implements a cascade HOG algorithm based on data previously learned in an interest area. A window suitable for the pedestrian size is detected as a Haar-like algorithm for a window area which is detected to the HOG cascade for resizing of the window area. The average value of the window size detected from the cascade HOG and detected through the Haar-like is determined as a pedestrian window at an optimum level of the window size for solving a problem of imaging only the upper body or the lower body. Each pedestrian window is traced by applying a Kalman filter in the previous algorithm, and an overlapped area of the detected pedestrian is removed by applying a clustering method on a mutually closed window so as to increase the recognition ratio of the pedestrian.;COPYRIGHT KIPO 2015
机译:行人识别技术涉及一种用于在图像中搜索行人的技术,并且广泛用于常见的安全性和监视,例如通过识别前方人员,对经过一个点的人数进行计数,保持当前行人检测技术的基本方法是保持最佳性能的定向梯度直方图(HOG)。然而,HOG算法具有难以实时应用并且由于大量操作而缓慢的缺点。本发明涉及通过安装在车辆上的照相机的行人识别技术。所提出的方法基于先前在感兴趣区域中学习的数据来实现级联HOG算法。检测适合于行人大小的窗口,作为针对窗口区域的类似Haar的算法,将其检测到HOG级联中以调整窗口区域的大小。从级联HOG检测并通过Haar样检测的窗口尺寸的平均值被确定为处于窗口尺寸的最佳水平的行人窗口,以解决仅对上半身或下半身成像的问题。通过在先前算法中应用卡尔曼滤波器来跟踪每个行人窗口,并通过在相互关闭的窗口上应用聚类方法去除检测到的行人的重叠区域,以提高行人的识别率。; COPYRIGHT KIPO 2015

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