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Experimental tests of vision-based artificial landmark detection using random forests and particle filter

机译:使用随机森林和粒子滤波的基于视觉的人工地标检测的实验测试

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This paper proposes a novel artificial landmark detection technique for underwater robots in structured underwater environment. The novel landmark detection technique is composed of a salient object segmentation using random forest combined with particle filter and an object recognition using weighted template matching. The random image patch-based random forest is employed for detection of the regions of salient objects and its accuracy is enhanced by combining with particle filter. Each detected candidate region is refined through the active contour technique and recognized as one of the artificial landmarks or background by the weighted template matching technique. The performance of the proposed method is evaluated by experiments with an autonomous underwater robot platform, yShark, developed by KRISO and the results are discussed by comparing with the result of the previous research.
机译:本文提出了一种结构化水下环境中水下机器人的新型人工地标检测技术。新颖的地标检测技术由使用随机森林结合粒子滤波器的显着目标分割和使用加权模板匹配的目标识别组成。基于随机图像补丁的随机森林被用于显着物体的区域检测,并且与粒子滤波器结合可以提高其准确性。通过主动轮廓技术完善每个检测到的候选区域,并通过加权模板匹配技术将其识别为人造地标或背景之一。通过使用由KRISO开发的自主水下机器人平台yShark进行的实验,评估了该方法的性能,并与以前的研究结果进行了讨论。

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