2023
DOI: 10.3390/electronics12194079
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Graph Attention Networks and Track Management for Multiple Object Tracking

Yajuan Zhang,
Yongquan Liang,
Ahmed Elazab
et al.

Abstract: Multiple object tracking (MOT) constitutes a critical research area within the field of computer vision. The creation of robust and efficient systems, which can approximate the mechanisms of human vision, is essential to enhance the efficacy of multiple object-tracking techniques. However, obstacles such as repetitive target appearances and frequent occlusions cause considerable inaccuracies or omissions in detection. Following the updating of these inaccurate observations into the tracklet, the effectiveness … Show more

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“…Feature extraction: The input to the network consists of multiple observations of the position, including x obs , y obs , and z obs , spanning from the past to the present [45]. At each time step k, the output includes observations of the velocity v obs,k , yaw angle ψ obs,k , and pitch angle θ obs,k .…”
Section: Gru-based Maneuver Estimation Networkmentioning
confidence: 99%
“…Feature extraction: The input to the network consists of multiple observations of the position, including x obs , y obs , and z obs , spanning from the past to the present [45]. At each time step k, the output includes observations of the velocity v obs,k , yaw angle ψ obs,k , and pitch angle θ obs,k .…”
Section: Gru-based Maneuver Estimation Networkmentioning
confidence: 99%