Zhou Yulong, Gao Min, Fang Dan, Zhang Baoquan
Electronic Engineering Department, Shijiazhuang Mechanical Engineering College, Heping Road, Shijiazhuang City, 050003 China ; 66393 Postdoctoral Science Research Workstation, Qiyi Road, Hebei Baoding City, 071000 China.
Electronic Engineering Department, Shijiazhuang Mechanical Engineering College, Heping Road, Shijiazhuang City, 050003 China.
Springerplus. 2016 Aug 24;5(1):1409. doi: 10.1186/s40064-016-3094-4. eCollection 2016.
In an effort to implement fast and effective tank segmentation from infrared images in complex background, the threshold of the maximum between-class variance method (i.e., the Otsu method) is analyzed and the working mechanism of the Otsu method is discussed. Subsequently, a fast and effective method for tank segmentation from infrared images in complex background is proposed based on the Otsu method via constraining the complex background of the image. Considering the complexity of background, the original image is firstly divided into three classes of target region, middle background and lower background via maximizing the sum of their between-class variances. Then, the unsupervised background constraint is implemented based on the within-class variance of target region and hence the original image can be simplified. Finally, the Otsu method is applied to simplified image for threshold selection. Experimental results on a variety of tank infrared images (880 × 480 pixels) in complex background demonstrate that the proposed method enjoys better segmentation performance and even could be comparative with the manual segmentation in segmented results. In addition, its average running time is only 9.22 ms, implying the new method with good performance in real time processing.
为了实现从复杂背景下的红外图像中快速有效地分割出坦克,分析了最大类间方差法(即大津法)的阈值,并讨论了大津法的工作机制。随后,基于大津法,通过对图像的复杂背景进行约束,提出了一种从复杂背景下的红外图像中快速有效地分割坦克的方法。考虑到背景的复杂性,首先通过最大化目标区域、中间背景和下部背景之间的类间方差之和,将原始图像分为这三类。然后,基于目标区域的类内方差实现无监督背景约束,从而简化原始图像。最后,将大津法应用于简化后的图像进行阈值选择。对各种复杂背景下的坦克红外图像(880×480像素)进行实验,结果表明,该方法具有较好的分割性能,分割结果甚至可与人工分割相媲美。此外,其平均运行时间仅为9.22毫秒,表明该新方法在实时处理方面具有良好的性能。