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Integrated AI Pipeline for Real-Time Anomaly Detection and Depth Analysis

Project
22006 SINTRA
Type
New service
Description

Developed and validated a multi-model pipeline combining HolmesVAU (LLM-based anomaly detection), NER, and YOLO World for dynamic object recognition in video streams. Implemented depth estimation using Video Depth Anything and cross-validated with Intel RealSense sensor data. Real-world data collection at Esenboğa Airport and privacy-preserving face blurring were successfully completed, enabling advanced situational awareness for security and surveillance.

Contact
aylin.yorulmaz@kocsistem.com.tr
Email
aylin.yorulmaz@kocsistem.com.tr
Research area(s)
Video Anomaly Detection, Depth Estimation, Multimodal AI, Privacy-Preserving Analytics
Technical features

Developed and validated a multi-model pipeline combining HolmesVAU (LLM-based anomaly detection), NER, and YOLO World for dynamic object recognition in video streams. Implemented depth estimation using Video Depth Anything and cross-validated with Intel RealSense sensor data. Real-world data collection at Esenboğa Airport and privacy-preserving face blurring were successfully completed, enabling advanced situational awareness for security and surveillance.

Integration constraints

TBD

Targeted customer(s)

TBD

Conditions for reuse

TBD

Confidentiality
Public
Publication date
30-04-2026
Involved partners
TAV Technologies (TUR)
KoçSistem (TUR)