Published July 25, 2022 | Version v1
Conference paper Open

Ablation Study of a Person Re-Identification on a Mobile Robot Using a Depth Camera

  • 1. Fraunhofer Institute for Material Flow and Logistics

Description

In this paper, we describe an ablation study for a person re-identification API on a mobile robot, for a closedworld setting, using only the IR gray value image of a depth camera. Previously, we have trained the state-of-the-art neural network for person re-identification with common parameters and methods. The resulting real-time application reached as closed-world setting a rank-1-accuracy of 94.78% and a mAP of 68.16%. Now, we focused on increasing the accuracy by removing and adjusting the image processing pipeline of our dataset. By these adjustments, we have reached a rank-1-accuracy of 98.56% and a mAP of 79.05%.

Files

Ablation_Study_of_a_Person_Re-Identification_on_a_Mobile_Robot_Using_a_Depth_Camera.pdf