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Towards Dense People Detection with Deep Learning and Depth images

Authors :
Fuentes-Jimenez, David
Losada-Gutierrez, Cristina
Casillas-Perez, David
Macias-Guarasa, Javier
Martin-Lopez, Roberto
Pizarro, Daniel
Luna, Carlos A.
Publication Year :
2020

Abstract

This paper proposes a DNN-based system that detects multiple people from a single depth image. Our neural network processes a depth image and outputs a likelihood map in image coordinates, where each detection corresponds to a Gaussian-shaped local distribution, centered at the person's head. The likelihood map encodes both the number of detected people and their 2D image positions, and can be used to recover the 3D position of each person using the depth image and the camera calibration parameters. Our architecture is compact, using separated convolutions to increase performance, and runs in real-time with low budget GPUs. We use simulated data for initially training the network, followed by fine tuning with a relatively small amount of real data. We show this strategy to be effective, producing networks that generalize to work with scenes different from those used during training. We thoroughly compare our method against the existing state-of-the-art, including both classical and DNN-based solutions. Our method outperforms existing methods and can accurately detect people in scenes with significant occlusions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2007.07171
Document Type :
Working Paper