首页> 外文会议>Computer Vision Workshops (ICCV Workshops), 2011 IEEE International Conference on >Scale and rotation invariant color features for weakly-supervised object Learning in 3D space
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Scale and rotation invariant color features for weakly-supervised object Learning in 3D space

机译:用于3D空间中弱监督对象学习的缩放和旋转不变颜色特征

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摘要

We propose a joint learning method for object classification and localization using 3D color texture features and geometry-based segmentation from weakly-labeled 3D color datasets. Recently, new consumer cameras such as Microsoft's Kinect produce not only color images but also depth images. These reduce the difficulty of object detection dramatically for the following reasons: (a) reasonable candidates for object segments can be given by detecting spatial discontinuity, and (b) 3D features that are robust to view-point variance can be extracted. The proposed method lists candidate segments by evaluating difference in angle between the surface normals of 3D points, extracts global 3D features from each segment, and learns object classifiers using Multiple Instance Learning with object labels attached to 3D color scenes. Experimental results show that the rotation invariance and scale invariance of features are crucial for solving this problem.
机译:我们提出了一种联合学习方法,用于从弱标签3D颜色数据集中使用3D颜色纹理特征和基于几何的分割进行对象分类和定位。最近,诸如Microsoft的Kinect之类的新型消费类相机不仅可以产生彩色图像,而且还可以产生深度图像。这些由于以下原因而大大降低了对象检测的难度:(a)通过检测空间不连续性可以为对象段提供合理的候选对象,并且(b)可以提取出对视点变化具有鲁棒性的3D特征。所提出的方法通过评估3D点的表面法线之间的角度差异来列出候选段,从每个段中提取全局3D特征,并使用带有附加到3D颜色场景的对象标签的多实例学习来学习对象分类器。实验结果表明,特征的旋转不变性和尺度不变性对于解决该问题至关重要。

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