A CNN-Based Framework for Video Analysis and Accident Detection

Arnav Tatewar, Sakshi Kothurkar, Shreyas Jadhav, Venktesh Mahajan, Mr. Digambar Jadhav, Mrs. Savita Jadhav
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Abstract

This research investigates the development and deployment of a Convolutional Neural Network (CNN) model for automatic accident detection in CCTV footage. The ever-increasing reliance on video surveillance necessitates efficient and accurate methods for accident identification. CNNs, with their inherent ability to learn complex spatial relationships within images, are particularly well-suited for this task. This study proposes a CNN architecture that utilizes a pre-trained MobileNetV2 base for feature extraction, followed by a custom classification head tailored to the specific task of accident vs. no accident classification. The model is trained on a dataset of grayscale video frames, achieving an impressive accuracy of 92% on the testing set. This high level of accuracy suggests that CNNs hold significant promise for real-world accident detection applications. Furthermore, to bridge the gap between research and practical implementation, the model is converted to a TensorFlow Lite (TFLite) format for deployment on resource-constrained devices. Additionally, a user-friendly frontend application is developed, empowering users to interact with the model and analyze both images and videos. This user-centric approach broadens the model's accessibility and paves the way for potential improvements in road safety through real-time accident detection.
基于 CNN 的视频分析和事故检测框架
本研究调查了卷积神经网络(CNN)模型的开发和部署情况,以自动检测闭路电视录像中的事故。随着人们对视频监控的依赖程度越来越高,必须采用高效、准确的方法来识别事故。卷积神经网络具有学习图像中复杂空间关系的固有能力,特别适合这项任务。本研究提出了一种 CNN 架构,利用预训练的 MobileNetV2 基础进行特征提取,然后根据事故与非事故分类的特定任务定制分类头。该模型在灰度视频帧数据集上进行了训练,在测试集上取得了令人印象深刻的 92% 的准确率。如此高的准确率表明,CNN 在现实世界的事故检测应用中大有可为。此外,为了缩小研究与实际应用之间的差距,该模型被转换为 TensorFlow Lite(TFLite)格式,以便在资源有限的设备上部署。此外,还开发了一个用户友好型前端应用程序,使用户能够与模型互动并分析图像和视频。这种以用户为中心的方法扩大了模型的可访问性,并为通过实时事故检测改善道路安全铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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