基于颜色轮廓框架的物体外观自主学习

Per-Erik Forssén, A. Moe
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引用次数: 14

摘要

在本文中,我们利用了机器人可以自主发现物体的想法,并通过戳戳场景中有趣的部分来学习它们的外观。为了提高目标识别的鲁棒性和区别性,我们用不变的纹理补丁方法代替了之前使用的颜色直方图特征。在由短彩色轮廓段构成的相似不变框架中提取纹理块。在平面场景的一般单应变换下,我们用可重复性检验证明了不变帧的鲁棒性。通过可重复性测试,我们发现使用椭圆段而不是线条来定义框架可以提高可重复性。我们还将开发的特征应用于物体外观的自主学习,并展示了如何在面外旋转和尺度变化的情况下识别学习到的物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Learning of Object Appearances using Colour Contour Frames
In this paper we make use of the idea that a robot can autonomously discover objects and learn their appearances by poking and prodding at interesting parts of a scene. In order to make the resultant object recognition ability more robust, and discriminative, we replace earlier used colour histogram features with an invariant texture-patch method. The texture patches are extracted in a similarity invariant frame which is constructed from short colour contour segments. We demonstrate the robustness of our invariant frames with a repeatability test under general homography transformations of a planar scene. Through the repeatability test, we find that defining the frame using using ellipse segments instead of lines where this is appropriate improves repeatability. We also apply the developed features to autonomous learning of object appearances, and show how the learned objects can be recognised under out-of-plane rotation and scale changes.
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