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Object Tracking Platform for Color Object Detection using Genetic Algorithm Optimization

机译:遗传算法优化的彩色物体检测目标跟踪平台

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The aim of this work is to resolve typical tracking's challenge, which is object detection in the scene. In this context, a new robotic system to detect objects in unknown indoor and outdoor environment is realized. The developed robotic system is equipped with ultrasonic sensor and camera, gives visually information about the environment around detected object. Therefore, the realized system works in real time by analyzing camera data making it possible to detect color, size and position of the object. The aim of the proposed strategy is to find a compromise between robustness and processing speed of color detection based on rapid threshold, which produces a much smaller number of edge pixels compared to standard approaches based on a simple threshold. This reduction significantly reduces the number of votes required for robust real-time detection of object parameters. The approach consists of two main phases. In the first calibration phase, which takes place offline, a heuristic method of color classification using genetic algorithms is learned from a copy of an image of our colored environment. Then, in the real-time monitoring phase, the color classification is applied to the input images, the object is detected and its position is returned. To boost the detection accuracy the fixed and adaptive threshold methods are tested and compared with the genetic algorithm method, where the last method presents a good results. Accordingly, an exact determination of position, orientation of mobile platform, and accurate determination of color object in the environment is succeed.
机译:这项工作的目的是解决典型的跟踪挑战,即场景中的目标检测。在这种情况下,实现了一种用于在未知的室内和室外环境中检测物体的新型机器人系统。研发的机器人系统配备了超声波传感器和摄像头,可以直观地显示有关被检测物体周围环境的信息。因此,所实现的系统通过分析相机数据实时工作,从而可以检测物体的颜色,大小和位置。提出的策略的目的是在基于快速阈值的颜色检测的鲁棒性和处理速度之间找到折衷方案,与基于简单阈值的标准方法相比,该方法产生的边缘像素数量要少得多。这种减少大大减少了可靠,实时地检测对象参数所需的投票数。该方法包括两个主要阶段。在离线进行的第一个校准阶段中,从我们彩色环境的图像副本中学习了使用遗传算法进行颜色分类的启发式方法。然后,在实时监视阶段,将颜色分类应用于输入图像,检测对象并返回其位置。为了提高检测精度,对固定阈值方法和自适应阈值方法进行了测试,并将其与遗传算法方法进行了比较,后者的方法具有很好的效果。因此,成功地确定了移动平台的位置,方向以及准确地确定了环境中的颜色对象。

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