Czúni László, Rashad Metwally
Department of Electrical Engineering and Information Systems, University of Pannonia, Veszprém 8200, Hungary.
Department of Information System, Faculty of Computers and Informatics, Benha University, Benha 13518, Egypt.
Sensors (Basel). 2018 Mar 7;18(3):801. doi: 10.3390/s18030801.
In the last few years, there has been a steadily growing interest in autonomous vehicles and robotic systems. While many of these agents are expected to have limited resources, these systems should be able to dynamically interact with other objects in their environment. We present an approach where lightweight sensory and processing techniques, requiring very limited memory and processing power, can be successfully applied to the task of object retrieval using sensors of different modalities. We use the Hough framework to fuse optical and orientation information of the different views of the objects. In the presented spatio-temporal perception technique, we apply active vision, where, based on the analysis of initial measurements, the direction of the next view is determined to increase the hit-rate of retrieval. The performance of the proposed methods is shown on three datasets loaded with heavy noise.
在过去几年中,人们对自动驾驶车辆和机器人系统的兴趣一直在稳步增长。虽然预计这些智能体中的许多资源有限,但这些系统应该能够与它们环境中的其他物体进行动态交互。我们提出了一种方法,其中需要非常有限内存和处理能力的轻量级传感和处理技术可以成功应用于使用不同模态传感器进行目标检索的任务。我们使用霍夫框架来融合物体不同视图的光学和方向信息。在所提出的时空感知技术中,我们应用主动视觉,即基于初始测量的分析来确定下一个视图的方向,以提高检索的命中率。所提方法的性能在三个加载了大量噪声的数据集上得到了展示。