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Study on Dim Target Detection and Discrimination from Sea Clutter 被引量:5
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作者 王文光 孙作为 +1 位作者 李晨鸣 王俊 《China Ocean Engineering》 SCIE EI CSCD 2013年第2期183-192,共10页
Dim target detection from sea clutter is one of the difficult topics in ocean remote sensing application. By aiming at the shortcoming of false alarms when using track before detect (TBD) based on dynamic programmin... Dim target detection from sea clutter is one of the difficult topics in ocean remote sensing application. By aiming at the shortcoming of false alarms when using track before detect (TBD) based on dynamic programming, a new discrimination method called statistics of direction histogram (SDH) is proposed, which is based on different features of trajectories between the true target and false one. Moreover, a new series of discrimination schemes of SDH and Local Extreme Value method (LEV) are studied and applied to simulate the actually measured radar data. The results show that the given discrimination is effective to reduce false alarms during dim targets detection. 展开更多
关键词 dim target track before detect (TBD) target discrimination statistics of direction histogram (SDH) sea clutter
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An online anomaly detection method for stream data using isolation principle and statistic histogram
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作者 Zhiguo Ding Minrui Fei Dajun Du 《International Journal of Modeling, Simulation, and Scientific Computing》 EI 2015年第2期85-106,共22页
Online anomaly detection for stream data has been explored recently,where the detector is supposed to be able to perform an accurate and timely judgment for the upcoming observation.However,due to the inherent complex... Online anomaly detection for stream data has been explored recently,where the detector is supposed to be able to perform an accurate and timely judgment for the upcoming observation.However,due to the inherent complex characteristics of stream data,such as quick generation,tremendous volume and dynamic evolution distribution,how to develop an effective online anomaly detection method is a challenge.The main objective of this paper is to propose an adaptive online anomaly detection method for stream data.This is achieved by combining isolation principle with online ensemble learning,which is then optimized by statistic histogram.Three main algorithms are developed,i.e.,online detector building algorithm,anomaly detecting algorithm and adaptive detector updating algorithm.To evaluate our proposed method,four massive datasets from the UCI machine learning repository recorded from real events were adopted.Extensive simulations based on these datasets show that our method is effective and robust against different scenarios. 展开更多
关键词 Online anomaly detection stream data isolation principle ensemble learning statistic histogram
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