Physical security assessment with convolutional neural network transfer learning
Title | Physical security assessment with convolutional neural network transfer learning |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Stubbs, J. J., Birch, G. C., Woo, B. L., Kouhestani, C. G. |
Conference Name | 2017 International Carnahan Conference on Security Technology (ICCST) |
Date Published | oct |
ISBN Number | 978-1-5386-1585-0 |
Keywords | artificial intelligence security, Artificial neural networks, convolutional neural network, convolutional neural network transfer learning, deep learning techniques, feature extraction, Human Behavior, human in the loop ground truth data, learning (artificial intelligence), machine learning, Metrics, neural nets, Nuisance Alarms, object detection, Object recognition, object recognition tasks, Periodic retraining, physical security, physical security assessment, physical security system, physical security video data, pubcrawl, Resiliency, Scalability, security, security of data, Support vector machines, target detection, Training, Training data, transfer learning, video signal processing, visible imager data |
Abstract | Deep learning techniques have demonstrated the ability to perform a variety of object recognition tasks using visible imager data; however, deep learning has not been implemented as a means to autonomously detect and assess targets of interest in a physical security system. We demonstrate the use of transfer learning on a convolutional neural network (CNN) to significantly reduce training time while keeping detection accuracy of physical security relevant targets high. Unlike many detection algorithms employed by video analytics within physical security systems, this method does not rely on temporal data to construct a background scene; targets of interest can halt motion indefinitely and still be detected by the implemented CNN. A key advantage of using deep learning is the ability for a network to improve over time. Periodic retraining can lead to better detection and higher confidence rates. We investigate training data size versus CNN test accuracy using physical security video data. Due to the large number of visible imagers, significant volume of data collected daily, and currently deployed human in the loop ground truth data, physical security systems present a unique environment that is well suited for analysis via CNNs. This could lead to the creation of algorithmic element that reduces human burden and decreases human analyzed nuisance alarms. |
URL | http://ieeexplore.ieee.org/document/8167800/ |
DOI | 10.1109/CCST.2017.8167800 |
Citation Key | stubbs_physical_2017 |
- security of data
- physical security
- physical security assessment
- physical security system
- physical security video data
- pubcrawl
- Resiliency
- Scalability
- security
- Periodic retraining
- Support vector machines
- target detection
- Training
- Training data
- transfer learning
- video signal processing
- visible imager data
- artificial intelligence security
- object recognition tasks
- Object recognition
- object detection
- Nuisance Alarms
- neural nets
- Metrics
- machine learning
- learning (artificial intelligence)
- human in the loop ground truth data
- Human behavior
- feature extraction
- deep learning techniques
- convolutional neural network transfer learning
- convolutional neural network
- Artificial Neural Networks