Women Safety Mobile Application Using ESP32 Camera and Real-Time Crime Data Analysis

Main Article Content

Awantika Thawale
Hiranshi Pal
Muskan Thakur
Mansi Anil Bhave
Pavithra Asokan
Er. Manisha Amnerkar

Abstract

The rising cases of harassment and assault against women have become a significant global concern, emphasizing the urgent need for effective, technology- driven safety solutions. This research presents a novel Women Safety Mobile Application integrated with real- time location tracking, crime data analytics, emergency communication, and an IoT-based ESP32 camera module for visual evidence collection. The system combines Android-based application design, Google Maps API, Firebase cloud storage, and ESP32-CAM hardware to provide a comprehensive safety ecosystem. It enables users to send automated SOS alerts containing live GPS coordinates and captures time-stamped images during emergencies. Furthermore, the system analyzes area-wise crime intensity using historical and real-time data, classifying zones into low, medium, or high-risk categories. The integration of IoT and mobile computing provides a cost-effective, efficient, and scalable model that enhances women’s personal security and situational awareness. Experimental results demonstrate high system reliability, rapid SOS response (under six seconds), and accurate crime-zone classification with 93% precision. This research contributes to the field of smart safety technologies by combining IoT, cloud computing, and data analytics to create an intelligent, real-time personal protection framework.


 

Article Details

How to Cite
Thawale, A., Pal, H., Thakur, M., Bhave, M. A., Asokan, P., & Amnerkar, E. M. (2026). Women Safety Mobile Application Using ESP32 Camera and Real-Time Crime Data Analysis. International Journal of Electrical, Electronics and Computer Systems, 14(2), 1–8. https://doi.org/10.65521/ijeecs.v14i2.1483
Section
Articles

Similar Articles

<< < 1 2 3 4 5 6 7 > >> 

You may also start an advanced similarity search for this article.