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A Scalable Tree-Based Approach for Joint Object and Pose Recognition

机译:一种可扩展的基于树的联合对象和姿态识别方法

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Recognizing possibly thousands of objects is a crucial capability for an autonomous agent to understand and interact with everyday environments. Practical object recognition comes in multiple forms: Is this a coffee mug? (category recognition). Is this Alice's coffee mug? (instance recognition). Is the mug with the handle facing left or right? (pose recognition). We present a scalable framework, Object-Pose Tree, which efficiently organizes data into a semantically structured tree. The tree structure enables both scalable training and testing, allowing us to solve recognition over thousands of object poses in near real-time. Moreover, by simultaneously optimizing all three tasks, our approach outperforms standard nearest neighbor and 1-vs-all classifications, with large improvements on pose recognition. We evaluate the proposed technique on a dataset of 300 household objects collected using a Kinect-style 3D camera. Experiments demonstrate that our system achieves robust and efficient object category, instance, and pose recognition on challenging everyday objects.
机译:识别可能成千上万的对象是自主代理人理解和与日常环境互动的关键能力。实际的对象识别有多种形式:这是咖啡杯吗? (类别识别)。这是爱丽丝的咖啡杯吗? (实例识别)。左侧或右手的手柄是杯子吗? (姿态识别)。我们介绍一个可扩展的框架,对象 - 姿势树,它有效地将数据组织成一个语义结构的树。树结构使可扩展的培训和测试都能够在近实时解决成千上万的对象姿势的识别。此外,通过同时优化所有三个任务,我们的方法优于标准的最近邻居和1-VS - 所有分类,具有大的提高识别。我们评估使用Kinect Squide 3D相机收集的300个家庭物体的数据集上的提出的技术。实验表明,我们的系统在充满挑战日常对象的情况下实现了强大而有效的对象类别,实例和构成识别。

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