昼夜可疑人类活动检测智能信息系统

J. Iqbal, S. Arun
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引用次数: 4

摘要

摄像机中的人体检测因其在异常事件检测、密集人群中人的计数、人的识别、老年人护理跌倒检测等方面的广泛应用而受到越来越多的关注。随着时间的推移,各种技术已经发展到增强视觉信息。本文提出了一种新的三维智能信息系统,利用热像仪和一对手持式通用串行总线(USB)摄像机对未校准的图像进行可视化,利用背景减法、校正、形态学、神经网络和深度估计来识别人类的异常活动。该系统利用加速鲁棒特征(SURF)检测最强点。绝对差和(Sum of Absolute Difference, SAD)算法匹配SURF检测到的最强点。本文对三维目标建模和图像序列拼接进行了研究。从不同的相机拍摄的一系列图像被缝合成几何上一致的马赛克水平/垂直基于图像采集。利用校正和视差对未标定的立体图像进行三维图像和深度估计。采用阈值法将背景与场景分离。利用形态学算子提取特征,得到骨架。从骨架中得到骨架图像的连接点和端点。利用热像仪和一对网络摄像头的神经网络等监督学习方法,创建人类异常活动的数据集。活动的特征向量与已经创建的数据集进行比较,如果出现匹配,分类器检测异常的人类活动。此外,该算法进行深度估计,动态测量目标的实时距离。该系统采用热像仪、英特尔计算棒、转换器、视频图形阵列(VGA)到高清多媒体接口(HDMI)和网络摄像头。提出的新型智能信息系统对不同的活动具有94%的最高准确率和89%的最低准确率,从而有效地检测白天和夜间的可疑活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Information System for Suspicious Human Activity Detection in Day and Night
The detection of human beings in a camera attracts more attention because of its wide range of applications such as abnormal event detection, person counting in a dense crowd, person identification, fall detection for care to elderly people, etc. Over the time, various techniques have evolved to enhance the visual information. This article presents a novel 3-D intelligent information system for identifying abnormal human activity using background subtraction, rectification, morphology, neural networks and depth estimation with a thermal camera and a pair of hand held Universal Serial Bus (USB) camera to visualize un-calibrated images. The proposed system detects strongest points using Speed-Up Robust Features (SURF). The Sum of Absolute Difference (SAD) algorithm match the strongest points detected by SURF. 3-D object model and image stitching from image sequences are carried out in the proposed work. A series of images captured from different cameras are stitched into a geometrically consistent mosaic either horizontally/vertically based on the image acquisition. 3-D image and depth estimation of un-calibrated stereo images are acquired using rectification and disparity. The background is separated from the scene using threshold approach. Features are extracted using morphological operators in order to get the skeleton. Junction points and end points of the skeleton image are obtained from the skeleton. Data set of abnormal human activity is created using supervised learning such as neural network with a thermal camera and a pair of webcam. The feature vector of an activity is compared with already created data set, if a match occurs the classifier detects abnormal human activity. Additionally the proposed algorithm performs depth estimation to measure real time distance of objects dynamically. The system use thermal camera, Intel computing stick, converter, video graphics array (VGA) to high-definition multimedia interface (HDMI) and webcams. The proposed novel intelligent information system gives 94% maximum accuracy and 89% minimum accuracy for different activities, thus it effectively detects suspicious activity during day and night.
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