Abstract

With the rapid development of video monitoring, the massive information of the monitoring image has far exceeded the effective processing range of human resources. Intelligent video retrieval technology has become an increasingly indispensable part of video monitoring system. Intelligent video retrieval technology integrates video processing, computer vision and artificial intelligence, which greatly improves the efficiency of monitoring and the accuracy and linkage of monitoring system. Face recognition and other emerging technologies continue to rise and apply to the security monitoring system. Based on deep learning theory and face detection neural network, this paper proposes a video oriented cascaded intelligent face detection algorithm, which builds deep learning network by cascading multiple features, from edge features, contour features, local features to semantic features, and advances layer by layer. According to the last semantic features, the information of the input data is obtained to accurately realize the face detection under the non ideal condition. Simulation results show that the algorithm has good detection performance for single face and multi face images, and has strong robustness for rotating face. At the same time, the algorithm is fast and can basically meet the requirements of real-time face detection.

Highlights

  • In recent years, with the rapid development of artificial intelligence, deep learning and other technologies, face recognition ushered in the outbreak period [1]

  • Face recognition technology has been an important subject in the field of computer vision for a long time, and it was mainly used in the field of public security in the early stage

  • The video monitoring system in the field of public security mainly focuses on the pre-warning analysis of the collected video images, but the post video analysis wastes a lot of manpower and energy

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Summary

Introduction

With the rapid development of artificial intelligence, deep learning and other technologies, face recognition ushered in the outbreak period [1]. We use the deep learning framework and image processing technology to propose an algorithm solution for face detection and face recognition in natural scenes, and compare it with the face recognition algorithm based on multi-scale and high-dimensional features in this paper.

Results
Conclusion
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