A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs

Ullah S, Koravuna S, Rückert U, Jungeblut T (Accepted)
Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland.

Konferenzbeitrag | Angenommen | Englisch
 
Download
Es wurden keine Dateien hochgeladen. Nur Publikationsnachweis!
Abstract / Bemerkung
In this paper, we propose a novel system that combines computer vision techniques with SNNs to detect spike vision-based multi-object and tracking. Our system integrates computer vision techniques for robust and accurate detection and tracking, extracts regions of interest (ROIs) for focused analysis, and simulates spiking neurons for biologically inspired representation. Our approach advances the understanding of visual processing and empowers the development of efficient SNN models. In addition, our approach has achieved state-of-the-art results in visual processing tasks, showcasing the effectiveness and superiority of our approach. Extensive experiments and evaluations have been conducted to demonstrate the effectiveness and superiority of our proposed architecture and algorithm. The results obtained from our system are provided in this paper, showcasing the revolutionary performance that validates the efficacy of our approach and establishes it as a promising solution in the field of SNNs.
Erscheinungsjahr
2023
Konferenz
Novel Trends in Data Science 2023
Konferenzort
Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland
Konferenzdatum
2023-10-22 – 2023-10-25
Page URI
https://pub.uni-bielefeld.de/record/2985188

Zitieren

Ullah S, Koravuna S, Rückert U, Jungeblut T. A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland.
Ullah, S., Koravuna, S., Rückert, U., & Jungeblut, T. (Accepted). A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland. https://doi.org/10.5281/zenodo.10262228
Ullah, Sana, Koravuna, Shamini, Rückert, Ulrich, and Jungeblut, Thorsten. Accepted. “A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs”. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland .
Ullah, S., Koravuna, S., Rückert, U., and Jungeblut, T. (Accepted).“A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs”. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland.
Ullah, S., et al., Accepted. A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland.
S. Ullah, et al., “A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs”, Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland, Accepted.
Ullah, S., Koravuna, S., Rückert, U., Jungeblut, T.: A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland (Accepted).
Ullah, Sana, Koravuna, Shamini, Rückert, Ulrich, and Jungeblut, Thorsten. “A Novel Spike Vision Approach for Robust Multi-Object Detection using SNNs”. Presented at the Novel Trends in Data Science 2023, Congressi Stefano Franscini at Monte Verità in Ticino, Switzerland, Accepted.

Link(s) zu Volltext(en)
Access Level
OA Open Access

Export

Markieren/ Markierung löschen
Markierte Publikationen

Open Data PUB

Quellen

Preprint: 10.5281/zenodo.10262228

Suchen in

Google Scholar