CNN-Based Framework for Pedestrian Age and Gender Classification Using Far-View Surveillance in Mixed-Traffic Intersections
Shisir Shahriar Arif, Md. Muhtashim Shahrier, Nazmul Haque, Md Asif Raihan, Md. Hadiuzzaman

TL;DR
This paper presents a CNN-based system for real-time classification of pedestrian age and gender from far-view intersection videos, aiding safety and infrastructure planning in congested urban areas.
Contribution
It introduces a novel deep learning framework that classifies pedestrian demographics using full-body cues without facial recognition, optimized for real-time surveillance in complex traffic environments.
Findings
ResNet50 with Max Pooling and SGD achieved 86.19% accuracy.
A lightweight CNN performed comparably with 84.15% accuracy and faster inference.
The system enables scalable, cost-effective demographic monitoring using existing cameras.
Abstract
Pedestrian safety remains a pressing concern in congested urban intersections, particularly in low- and middle-income countries where traffic is multimodal, and infrastructure often lacks formal control. Demographic factors like age and gender significantly influence pedestrian vulnerability, yet real-time monitoring systems rarely capture this information. To address this gap, this study proposes a deep learning framework that classifies pedestrian age group and gender from far-view intersection footage using convolutional neural networks (CNNs), without relying on facial recognition or high-resolution imagery. The classification is structured as a unified six-class problem, distinguishing adult, teenager, and child pedestrians for both males and females, based on full-body visual cues. Video data was collected from three high-risk intersections in Dhaka, Bangladesh. Two CNN…
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Taxonomy
TopicsTraffic and Road Safety · Advanced Neural Network Applications · Autonomous Vehicle Technology and Safety
