行人检测是计算机视觉、智能交通等领域研究的热点与难点,基于深度传感器对室内复杂场景下的行人检测展开研究。目前,基于颜色与深度数据的目标检测方法主要包括基于背景学习的方法和基于特征检测算子的方法,前者依赖于视频序列头几十...行人检测是计算机视觉、智能交通等领域研究的热点与难点,基于深度传感器对室内复杂场景下的行人检测展开研究。目前,基于颜色与深度数据的目标检测方法主要包括基于背景学习的方法和基于特征检测算子的方法,前者依赖于视频序列头几十帧的背景知识,帧的数量决定检测质量;后者存在计算量大的问题,训练样本的不足也会影响行人检测结果。因此,深入分析了复杂场景特征,融合颜色和深度信息,提出了RGBD+ViBe(visual background extractor)背景剔除方法,实现前景运动目标的准确提取。实验结果表明,提出的RGBD+ViBe方法在前景运动目标检测准确率方面要明显高于仅考虑颜色或深度信息方法以及RGBD+MoG(model of Gaussian)方法。展开更多
Mapping in the dynamic environment is an important task for autonomous mobile robots due to the unavoidable changes in the workspace. In this paper, we propose a framework for RGBD SLAM in low dynamic environment, whi...Mapping in the dynamic environment is an important task for autonomous mobile robots due to the unavoidable changes in the workspace. In this paper, we propose a framework for RGBD SLAM in low dynamic environment, which can maintain a map keeping track of the latest environment. The main model describing the environment is a multi-session pose graph, which evolves over the multiple visits of the robot. The poses in the graph will be pruned when the 3D point scans corresponding to those poses are out of date. When the robot explores the new areas, its poses will be added to the graph. Thus the scans kept in the current graph will always give a map of the latest environment. The changes of the environment are detected by out-of-dated scans identification module through analyzing scans collected at different sessions. Besides, a redundant scans identification module is employed to further reduce the poses with redundant scans in order to keep the total number of poses in the graph with respect to the size of environment. In the experiments, the framework is first tuned and tested on data acquired by a Kinect from laboratory environment. Then the framework is applied to external dataset acquired by a Kinect II from a workspace of an industrial robot in another country, which is blind to the development phase, for further validation of the performance. After this two-step evaluation, the proposed framework is considered to be able to manage the map in date in dynamic or static environment with a noncumulative complexity and acceptable error level.展开更多
文摘行人检测是计算机视觉、智能交通等领域研究的热点与难点,基于深度传感器对室内复杂场景下的行人检测展开研究。目前,基于颜色与深度数据的目标检测方法主要包括基于背景学习的方法和基于特征检测算子的方法,前者依赖于视频序列头几十帧的背景知识,帧的数量决定检测质量;后者存在计算量大的问题,训练样本的不足也会影响行人检测结果。因此,深入分析了复杂场景特征,融合颜色和深度信息,提出了RGBD+ViBe(visual background extractor)背景剔除方法,实现前景运动目标的准确提取。实验结果表明,提出的RGBD+ViBe方法在前景运动目标检测准确率方面要明显高于仅考虑颜色或深度信息方法以及RGBD+MoG(model of Gaussian)方法。
基金This work is supported by the National Natural Science Foundation of China (Grant No. NSFC: 61473258, U 1509210), and the Joint Centre for Robotics Research (JCRR) between Zhejiang University and the University of Technology, Sydney.
文摘Mapping in the dynamic environment is an important task for autonomous mobile robots due to the unavoidable changes in the workspace. In this paper, we propose a framework for RGBD SLAM in low dynamic environment, which can maintain a map keeping track of the latest environment. The main model describing the environment is a multi-session pose graph, which evolves over the multiple visits of the robot. The poses in the graph will be pruned when the 3D point scans corresponding to those poses are out of date. When the robot explores the new areas, its poses will be added to the graph. Thus the scans kept in the current graph will always give a map of the latest environment. The changes of the environment are detected by out-of-dated scans identification module through analyzing scans collected at different sessions. Besides, a redundant scans identification module is employed to further reduce the poses with redundant scans in order to keep the total number of poses in the graph with respect to the size of environment. In the experiments, the framework is first tuned and tested on data acquired by a Kinect from laboratory environment. Then the framework is applied to external dataset acquired by a Kinect II from a workspace of an industrial robot in another country, which is blind to the development phase, for further validation of the performance. After this two-step evaluation, the proposed framework is considered to be able to manage the map in date in dynamic or static environment with a noncumulative complexity and acceptable error level.