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Papers/BundleTrack: 6D Pose Tracking for Novel Objects without In...

BundleTrack: 6D Pose Tracking for Novel Objects without Instance or Category-Level 3D Models

Bowen Wen, Kostas Bekris

2021-08-01Visual TrackingReal-Time Visual Tracking3D Object Tracking6D Pose Estimation using RGBObject TrackingPose TrackingRobot Manipulation6D Pose Estimation using RGBD6D Pose EstimationVideo Object Tracking
PaperPDFCode(official)

Abstract

Tracking the 6D pose of objects in video sequences is important for robot manipulation. Most prior efforts, however, often assume that the target object's CAD model, at least at a category-level, is available for offline training or during online template matching. This work proposes BundleTrack, a general framework for 6D pose tracking of novel objects, which does not depend upon 3D models, either at the instance or category-level. It leverages the complementary attributes of recent advances in deep learning for segmentation and robust feature extraction, as well as memory-augmented pose graph optimization for spatiotemporal consistency. This enables long-term, low-drift tracking under various challenging scenarios, including significant occlusions and object motions. Comprehensive experiments given two public benchmarks demonstrate that the proposed approach significantly outperforms state-of-art, category-level 6D tracking or dynamic SLAM methods. When compared against state-of-art methods that rely on an object instance CAD model, comparable performance is achieved, despite the proposed method's reduced information requirements. An efficient implementation in CUDA provides a real-time performance of 10Hz for the entire framework. Code is available at: https://github.com/wenbowen123/BundleTrack

Results

TaskDatasetMetricValueModel
Pose EstimationREAL275Rerr2.4BundleTrack
Pose EstimationREAL275Terr2.1BundleTrack
Pose EstimationREAL275mAP 3DIou@2599.9BundleTrack
Pose EstimationREAL275mAP 5, 5cm87.4BundleTrack
3DREAL275Rerr2.4BundleTrack
3DREAL275Terr2.1BundleTrack
3DREAL275mAP 3DIou@2599.9BundleTrack
3DREAL275mAP 5, 5cm87.4BundleTrack
1 Image, 2*2 StitchiREAL275Rerr2.4BundleTrack
1 Image, 2*2 StitchiREAL275Terr2.1BundleTrack
1 Image, 2*2 StitchiREAL275mAP 3DIou@2599.9BundleTrack
1 Image, 2*2 StitchiREAL275mAP 5, 5cm87.4BundleTrack

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