Object Re-identification from Point Clouds

Title Object Re-identification from Point Clouds
Author
Abstract

Object re-identification (ReID) from images plays a critical role in application domains of image retrieval (surveillance, retail analytics, etc.) and multi-object tracking (autonomous driving, robotics, etc.). However, systems that additionally or exclusively perceive the world from depth sensors are becoming more commonplace without any corresponding methods for object ReID. In this work, we fill the gap by providing the first large-scale study of object ReID from point clouds and establishing its performance relative to image ReID. To enable such a study, we create two large-scale ReID datasets with paired image and LiDAR observations and propose a lightweight matching head that can be concatenated to any set or sequence processing backbone (e.g., PointNet or ViT), creating a family of comparable object ReID networks for both modalities. Run in Siamese style, our proposed point cloud ReID networks can make thousands of pairwise comparisons in real-time (10 Hz). Our findings demonstrate that their performance increases with higher sensor resolution and approaches that of image ReID when observations are sufficiently dense. Our strongest network trained at the largest scale achieves ReID accuracy exceeding 90% for rigid objects and 85% for deformable objects (without any explicit skeleton normalization). To our knowledge, we are the first to study object re-identification from real point cloud observations. Our code is available at https://github.com/bentherien/point-cloud-reid.

Year of Publication
2024
Conference Name
IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)
Publisher
IEEE
URL
https://www.computer.org/csdl/proceedings-article/wacv/2024/189200i362/1W0cAwJ65Co
DOI
https://doi.ieeecomputersociety.org/10.1109/WACV57701.2024.00819
Refereed Designation
referred
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