Pedestrian Detection with High-resolution Event Camera

Miniatura

Data

2023

Tytuł czasopisma

ISSN czasopisma

Tytuł tomu

Wydawca

Wydawnictwo Politechniki Łódzkiej
Lodz University of Technology Press

Abstrakt

Despite the dynamic development of computer vision algorithms, the implementation of perception and control systems for autonomous vehicles such as drones and self-driving cars still poses many challenges. A video stream captured by traditional cameras is often prone to problems such as motion blur or degraded image quality caused due to challenging lighting conditions. In addition, the frame rate – typically 30 or 60 frames per second – can be a limiting factor in certain scenarios. Event cameras (DVS – Dynamic Vision Sensor) are a potentially interesting technology to address the above mentioned problems. In this paper, we compare two methods of processing event data by means of deep learning for the task of pedestrian detection. We used a representation in the form of video frames, convolutional neural networks and asynchronous sparse convolutional neural networks. The results obtained illustrate the potential of event cameras and allow the evaluation of the effectiveness and efficiency of the methods used for high-resolution (1280 x 720 pixels) footage.

Opis

Słowa kluczowe

pedestrian detection, event camera, convolutional neural networks, sparse convolutional neural networks, detekcja pieszych, kamera zdarzeń, splotowe sieci neuronowe, rzadkie splotowe sieci neuronowe

Cytowanie

Wzorek P., Kryjak T., Pedestrian Detection with High-resolution Event Camera. W: Progress in Polish Artificial Intelligence Research 4, Wojciechowski A. (Ed.), Lipiński P. (Ed.)., Seria: Monografie Politechniki Łódzkiej Nr. 2437, Wydawnictwo Politechniki Łódzkiej, Łódź 2023, s. 55-60, ISBN 978-83-66741-92-8, doi: 10.34658/9788366741928.7.

Kolekcje

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