Publications

Detailed Information

End-to-End Multi-Object Detection with a Regularized Mixture Model

Cited 0 time in Web of Science Cited 0 time in Scopus
Authors

Yoo, Jaeyoung; Lee, Hojun; Seo, Seunghyeon; Chung, Inseop; Kwak, Nojun

Issue Date
2023
Publisher
ML Research Press
Citation
Proceedings of Machine Learning Research, Vol.202, pp.40093-40110
Abstract
Recent end-to-end multi-object detectors simplify the inference pipeline by removing handcrafted processes such as non-maximum suppression (NMS). However, during training, they still heavily rely on heuristics and hand-crafted processes which deteriorate the reliability of the predicted confidence score. In this paper, we propose a novel framework to train an end-to-end multi-object detector consisting of only two terms: negative log-likelihood (NLL) and a regularization term. In doing so, the multi-object detection problem is treated as density estimation of the ground truth bounding boxes utilizing a regularized mixture density model. The proposed end-to-end multi-object Detection with a Regularized Mixture Model (D-RMM) is trained by minimizing the NLL with the proposed regularization term, maximum component maximization (MCM) loss, preventing duplicate predictions. Our method reduces the heuristics of the training process and improves the reliability of the predicted confidence score. Moreover, our D-RMM outperforms the previous end-to-end detectors on MS COCO dataset. Code is available at https://github.com/lhj815/D-RMM.
ISSN
2640-3498
URI
https://hdl.handle.net/10371/205376
Files in This Item:
There are no files associated with this item.
Appears in Collections:

Related Researcher

  • Graduate School of Convergence Science & Technology
  • Department of Intelligence and Information
Research Area Feature Selection and Extraction, Object Detection, Object Recognition

Altmetrics

Item View & Download Count

  • mendeley

Items in S-Space are protected by copyright, with all rights reserved, unless otherwise indicated.

Share