Feature Transform Technique for Combining Landmark Detection and Tracking of Visual Information of Large Rain Forest Areas

F. Pinage, Jose Reginaldo Hughes Carvalho, Emory Raphael Viana Freitas, José Pinheiro de Queiroz Neto
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引用次数: 2

Abstract

Researchers have been spending a lot of effort in increasing the level of autonomy of Unmanned Aerial Systems (UASs). There is a sort of important scenarios where an autonomous drone would be very effective. One of these scenarios of applications is the long term monitoring of the Amazon rain forest. The uniform pattern of the canopy defines a mission difficult to be performed by a human operator. Imagine someone in front of a monitor seeing for hours long the very same thing: treetops. In such situation, an embedded vision system capable to drive the vehicle while taking decision of what is not fitting to a standard canopy pattern plays a critical role on both remotely operated and autonomous navigation modes. The goal of this work is to present a scheme based on image processing able to extract natural landmarks in forest areas, and to track them during posterior missions over the same area, as reference for the onboard navigation system. The scheme is composed of two main steps: 1) Nonrelevant features suppression based on wavelet, to eliminate the canopy uniform pattern, and 2) Key points extraction by SIFT algorithm, to extract new landmarks or to track existing ones. Preliminary results demonstrated that this system can increase the robustness of mission execution in scenarios where usually only GPS references are available.
结合大热带雨林区域视觉信息地标检测与跟踪的特征变换技术
研究人员一直在努力提高无人机系统(UASs)的自主水平。有一种重要的情况下,自主无人机将非常有效。其中一个应用场景是对亚马逊雨林的长期监测。天篷的统一图案定义了难以由人类操作员执行的任务。想象一下,一个人在显示器前连续几个小时看到同样的东西:树梢。在这种情况下,一个嵌入式视觉系统能够在驾驶车辆的同时决定什么不适合标准的车顶图案,这在远程操作和自主导航模式中都起着至关重要的作用。这项工作的目标是提出一种基于图像处理的方案,能够提取森林地区的自然地标,并在同一区域的后续任务中跟踪它们,作为机载导航系统的参考。该方案由两个主要步骤组成:1)基于小波的非相关特征抑制,消除冠层均匀模式;2)SIFT算法提取关键点,提取新的地标或跟踪现有地标。初步结果表明,在通常只有GPS参考的情况下,该系统可以提高任务执行的鲁棒性。
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