Suspect Detection in Real Time using Generative AI
Generated Dataset
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Modesh Khandelwal, Eswaran Parthsarthy
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.587
Pages:
1448-1453
Abstract
Real-time suspect detection presents a formidable challenge for AI and ML methods
due to the need for extensive image data. This work proposes a solution using Generative AI
algorithms like GAN, StyleGAN, and TGAN to create a diverse high-definition test dataset
from a single suspect image. Through feature-guided face manipulation, the algorithms
generate realistic facial expressions and scenarios, expanding the dataset without requiring
numerous unique images. Subsequently, the augmented dataset trains a Face Detection model,
which analyses live video streams to identify suspects. Upon detection, the system triggers realtime
alerts for swift intervention. By leveraging Generative AI for dataset augmentation and
training robust Face Detection models, the project aims to improve suspect detection accuracy
and efficiency in real-world settings, bolstering public safety measures.