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TrackNet: A Triplet metric-based method for Multi-Target Multi-Camera Vehicle Tracking

2022-05-27 09:40:00
David Serrano, Francesc Net, Juan Antonio Rodríguez, Igor Ugarte

Abstract

We present TrackNet, a method for Multi-Target Multi-Camera (MTMC) vehicle tracking from traffic video sequences. Cross-camera vehicle tracking has proved to be a challenging task due to perspective, scale and speed variance, as well occlusions and noise conditions. Our method is based on a modular approach that first detects vehicles frame-by-frame using Faster R-CNN, then tracks detections through single camera using Kalman filter, and finally matches tracks by a triplet metric learning strategy. We conduct experiments on TrackNet within the AI City Challenge framework, and present competitive IDF1 results of 0.4733.

Abstract (translated)

URL

https://arxiv.org/abs/2205.13857

PDF

https://arxiv.org/pdf/2205.13857.pdf


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