Abstract

Video surveillance may involve the simultaneous monitoring of a large number of areas. Real-time automatic change detection of a monitoring area (such as involving the movement of people or vehicles) can reduce risks incurred in negligent manual observation. However, the low signal-to-noise ratio (SNR) of dark environments can significantly corrupt camera images, making it difficult for machine learning surveillance systems to detect small changes in monitored images. In addition, in the absence of changes between two multitemporal monitoring images, sensor noise can lead to false alarms. The objective of this paper is to reduce the effect of sensor noise on change detection of monitored images and the run time of change detection algorithms. For these purposes, we proposed a novel multitemporal monitoring image change detection algorithm based on morphological structure filtering and normalized fusion difference image. First, the random noise in two surveillance images was removed using a multidirectional weighted multiscale series of a morphological filter. Next, two difference images were obtained by using the compression log-ratio operator and the mean ratio operator, and a fusion difference image was obtained by equal-weight fusion of the two difference images. Then, the sigmoid function was used to compress the fusion difference map to obtain a normalized fusion difference image, and a median filter was used to obtain a final difference image. Finally, the k-means clustering algorithm was utilized to obtain the change detection results. The experimental results demonstrate that the proposed method can accurately detect changes in a night monitoring scene in real time. Subjective and objective evaluation of the experimental results demonstrate that the proposed method is superior to reference algorithms in terms of change detection accuracy, time and robustness.

Highlights

  • Surveillance cameras are widely used in the field of public safety

  • In order to accurately detect in real time, the changes in the multitemporal monitoring image under the condition of low illumination, and avoid false alarm when the scene reflected by the monitoring video does not change, we proposed a change detection algorithm for multitemporal surveillance images under low illumination conditions

  • The objective of this study is to reduce the effect of sensor noise on change detection in monitored images and decrease the run time of the change detection algorithm

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Summary

Introduction

Surveillance cameras are widely used in the field of public safety. Special situations may require the simultaneous monitoring of dozens or hundreds of areas. Guards must watch displays of different areas on multiple monitors at the same time. Abnormal situations in image may not be noticed in a timely manner. Security personnel could be replaced by applying change detection methods to video. The associate editor coordinating the review of this manuscript and approving it for publication was M.

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