MOTS R-CNN: Cosine-margin-triplet loss for multi-object tracking

02/06/2021
by   Amit Satish Unde, et al.
0

One of the central tasks of multi-object tracking involves learning a distance metric that is consistent with the semantic similarities of objects. The design of an appropriate loss function that encourages discriminative feature learning is among the most crucial challenges in deep neural network-based metric learning. Despite significant progress, slow convergence and a poor local optimum of the existing contrastive and triplet loss based deep metric learning methods necessitates a better solution. In this paper, we propose cosine-margin-contrastive (CMC) and cosine-margin-triplet (CMT) loss by reformulating both contrastive and triplet loss functions from the perspective of cosine distance. The proposed reformulation as a cosine loss is achieved by feature normalization which distributes the learned features on a hypersphere. We then propose the MOTS R-CNN framework for joint multi-object tracking and segmentation, particularly targeted at improving the tracking performance. Specifically, the tracking problem is addressed through deep metric learning based on the proposed loss functions. We propose a scale-invariant tracking by using a multi-layer feature aggregation scheme to make the model robust against object scale variations and occlusions. The MOTS R-CNN achieves the state-of-the-art tracking performance on the KITTI MOTS dataset. We show that the MOTS R-CNN reduces the identity switching by 62% and 61% on cars and pedestrians, respectively in comparison to Track R-CNN.

READ FULL TEXT

page 5

page 8

research
05/25/2019

Constellation Loss: Improving the efficiency of deep metric learning loss functions for optimal embedding

Metric learning has become an attractive field for research on the lates...
research
06/15/2021

Hotel Recognition via Latent Image Embedding

We approach the problem of hotel recognition with deep metric learning. ...
research
08/04/2017

Deep Metric Learning with Angular Loss

The modern image search system requires semantic understanding of image,...
research
05/19/2017

Quadruplet Network with One-Shot Learning for Visual Tracking

As a discriminative method of one-shot learning, Siamese deep network al...
research
01/16/2021

Hashing and metric learning for charged particle tracking

We propose a novel approach to charged particle tracking at high intensi...
research
06/26/2023

Histopathology Image Classification using Deep Manifold Contrastive Learning

Contrastive learning has gained popularity due to its robustness with go...
research
01/21/2019

Robust Angular Local Descriptor Learning

In recent years, the learned local descriptors have outperformed handcra...

Please sign up or login with your details

Forgot password? Click here to reset