Hashmod: A Hashing Method For Scalable 3D Object Detection
2016 Β· Wadim Kehl, Federico Tombari, Nassir Navab, et al.
Abstract
We present a scalable method for detecting objects and estimating their 3D poses in RGB-D data. To this end, we rely on an efficient representation of object views and employ hashing techniques to match these views against the input frame in a scalable way. While a similar approach already exists for 2D detection, we show how to extend it to estimate the 3D pose of the detected objects. In particular, we explore different hashing strategies and identify the one which is more suitable to our problem. We show empirically that the complexity of our method is sublinear with the number of objects and we enable detection and pose estimation of many 3D objects with high accuracy while outperforming the state-of-the-art in terms of runtime.
Authors
(none)
Tags
Stats
Related papers
- Object Detection Based Deep Unsupervised Hashing (2018)6.34
- Unsupervised Deep Hashing For Large-scale Visual Search (2016)9.59
- Masked Space-time Hash Encoding For Efficient Dynamic Scene Reconstruction (2023)7.52
- 3D Pose Estimation And 3D Model Retrieval For Objects In The Wild (2018)15.25
- Locality Preserving Multiview Graph Hashing For Large Scale Remote Sensing Image Search (2023)4.52
- GPU Accelerated Cascade Hashing Image Matching For Large Scale 3D Reconstruction (2018)0.00
- Bilinear Supervised Hashing Based On 2D Image Features (2019)8.60
- Attributes Grouping And Mining Hashing For Fine-grained Image Retrieval (2023)10.07