Bakal, Mahmut Furkan

Loading...
Name Variants
Mahmut Furkan, Bakal M.,Bakal B., Mahmut Furkan M., Bakal B.,Mahmut Furkan Bakal,M.F. M. F. Bakal Bakal, Mahmut Furkan M.F.Bakal
Job Title
Araştırma Görevlisi
Email Address
furkan.bakal@atilim.edu.tr
Main Affiliation
Computer Engineering
Status
Website
ORCID ID
Scopus Author ID
Turkish CoHE Profile ID
Google Scholar ID
WoS Researcher ID
No research topics data found.

Sustainable Development Goals

SDG data is not available
This researcher does not have a Scopus ID.
This researcher does not have a WoS ID.
No records found in other affiliations.
Scholarly Output

1

Articles

0

Views / Downloads

0/0

Supervised MSc Theses

0

Supervised PhD Theses

0

WoS Citation Count

0

Scopus Citation Count

0

Patents

0

Projects

0

WoS Citations per Publication

0.00

Scopus Citations per Publication

0.00

Open Access Source

0

Supervised Theses

0

JournalCount
Proceedings - 5th International Conference on Informatics and Software Engineering, IISEC 2026 -- 5th International Conference on Informatics and Software Engineering, IISEC 2026 -- 5 February 2026 through 6 February 2026 -- Ankara -- 2215231
Current Page: 1 / 1

Scopus Quartile Distribution

Quartile distribution chart data is not available

Competency Cloud

GCRIS Competency Cloud

Scholarly Output Search Results

Now showing 1 - 1 of 1
  • Conference Object
    A Multimodal Synthetic Dataset for Multi-Camera Human Detection and Occlusion Analysis in Indoor Environments
    (Institute of Electrical and Electronics Engineers Inc., 2026-02-05) Kocabas, Ifagat Buse; Sezen, Arda; Ustun, Tutku Irem; Bakal, Mahmut Furkan; Turkmen, Guzin; Sengul, Gokhan
    Synthetic data has become an essential component in modern computer vision and robotics research, particularly in applications where collecting large, diverse, and fully annotated real world datasets are impractical or impossible. This study presents a high resolution, multimodal, and multi camera synthetic dataset specifically developed for human detection and partial visibility analysis in indoor environments. Two distinct scenarios were designed within NVIDIA Isaac Sim, involving a total of eleven cameras positioned across separate residential spaces. The use of 120 FPS animations and synchronized multimodal annotation generation enabled detailed capture of human motion, occlusion, and scene variability. Diverse human models, including variations in appearance, clothing, accessories, and behavior, were incorporated to replicate real world heterogeneity and challenge vision algorithms under complex conditions. Despite the benefits of precise annotation and full environmental control, the study also revealed clear constraints related to computational load and real time simulation performance, particularly when generating dense annotation sets. The resulting dataset nonetheless provides a rich and comprehensive foundation for research in human tracking, multi camera fusion, behavior understanding, and security oriented computer vision systems. The expanded analysis concludes that synthetic data, when produced through high fidelity simulation workflows, offers a practical, ethical, and scalable alternative that can significantly advance both methodological and applied research. © 2026 IEEE.