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Orientation-boosted Voxel Nets for 3D Object Recognition

About

Recent work has shown good recognition results in 3D object recognition using 3D convolutional networks. In this paper, we show that the object orientation plays an important role in 3D recognition. More specifically, we argue that objects induce different features in the network under rotation. Thus, we approach the category-level classification task as a multi-task problem, in which the network is trained to predict the pose of the object in addition to the class label as a parallel task. We show that this yields significant improvements in the classification results. We test our suggested architecture on several datasets representing various 3D data sources: LiDAR data, CAD models, and RGB-D images. We report state-of-the-art results on classification as well as significant improvements in precision and speed over the baseline on 3D detection.

Nima Sedaghat, Mohammadreza Zolfaghari, Ehsan Amiri, Thomas Brox• 2016

Related benchmarks

TaskDatasetResultRank
3D shape recognitionModelNet10 (test)
Accuracy93.8
64
3D Object ClassificationModelNet10 (test)
Mean Class Accuracy93.9
57
Object ClassificationModelNet10 (test)
Accuracy93.8
46
Point Cloud ClassificationSydney Urban Objects
Mean F177.8
7
3D Object ClassificationNYU v2 (test)
Classification Accuracy75.5
6
3D Object ClassificationSydney Urban Objects (test)
Weighted Avg F177.8
5
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