期刊文献+

基于空域和频域处理的红外图像细节增强算法 被引量:17

Infrared Image Detail Enhancement Based on the Spatial and Frequency Domain Processing
在线阅读 下载PDF
导出
摘要 高精度高动态红外图像具有对比度低和有效灰度范围窄的特点,因此为了提高红外图像细节纹理的显著性,避免空域处理中噪声和盲元对弱对比度细节纹理的影响,同时利用频域处理的全局性,提出了一种基于空域和频域处理的红外图像细节增强算法。首先在空域内对红外图像进行高频细节和低频背景的分离,然后将其转换到频域内并利用伽玛变换对细节的高频分量进行增强,同时对背景的高频分量进行抑制;将处理后的高频细节和低频背景在空域中以给定的权重值进行重建;最后利用直方图统计拉伸处理实现红外图像有效灰度范围的扩展和细节对比度的增强。实验结果表明,不论是人眼的主观评价还是客观评价,本算法都具有较强的细节增强能力和较佳的图像视觉表现,且具有实时处理的前景。 The high dynamic range (HDR) infrared image has the characteristics of low contrast and narrow active grayscale range. In order to enhance the image details, as weli as take advantage of the global feature of frequency processing, in this paper the infrared image detail enhancement based on the spatial and frequency domain (SFDE) is presented. First, the high-frequency details and the low-frequency background of the image are separated in the spatial domain and then they are both Fourier transformed into the frequency domain. By using the gamma correction, the details representing the interesting high-frequency texture are enhanced, while the high frequency of the background is suppressed at the same time. The processed details and background are recombined in the spatial domain with respect to the weights to obtain the detail-enhanced image that fits the human perception after by using the proposed histogram statistical stretching (HSS). The experiments in this paper show that the subjective and objective evaluations both approve the effectiveness and optimal performance of the proposed algorithm for the perfect detail enhancement, and it is also capable of real-time processing.
出处 《红外技术》 CSCD 北大核心 2011年第8期477-482,共6页 Infrared Technology
基金 国家自然科学基金(60877060) (60971010) 教育部高校博士点基金新教师项目(20070007022)
关键词 红外图像 图像增强 空域和频域 直方图统计拉伸 细节增强 Infrared image, Image enhancement, Spatial and frequency domain processing, Histogram statistical stretching, Detail enhancement
  • 相关文献

参考文献19

  • 1Digital Detail Enhancement. [EB/OL]. http://www. flit.com/uploadedfiles/Eurasia/MMC/Tech_Notes.
  • 2范永杰,金伟其,刘斌,刘崇亮.FLIR公司热成像细节增强DDE技术的分析[J].红外技术,2010,32(3):161-164. 被引量:21
  • 3Tarik A, Salih D, Yucel A. A histogram modification framework and its application for image contrast enhancement[J]. IEEE Trans. Imag. Proc., 2009, 18(9): 1921-1935.
  • 4Vickers V E. Plateau equalization algorithm for realtime display of high-quality infrared imagery[J]. Opt. Eng., 1996, 35(7): 1921-1926.
  • 5Park G H, Cho H H, Choi M R. A contrast enhancement method using dynamic range separate histogram equalization[J]. IEEE Trans. Consum. Electron., 2008, 54(4): 1981-1987.
  • 6Kim Y T. Enhancement using brightness preserving bi-histogram equalization[J]. IEEE Trans. Consum. Electron., 1997, 43(1): 1-8.
  • 7Kokufuta K, Maruyama T. Realtime processing of local contrast enhancement on FPGA[C]//International conference field programmable logic and applications, 2009:288-293.
  • 8刘延,任永杰,李群伟,王琳.基于FPGA的直方图均衡实时并行算法及新架构实现[J].红外技术,2010,32(3):148-151. 被引量:6
  • 9Kim J Y, Kim L S, Hwang S H. An advanced contrast enhancement using partially overlapped sub-block histogram equalization[J]. IEEE Trans. Circuits and Systems for Video Technology, 2001, 11(4): 475-484.
  • 10Fabrizio L, Bartolomeo M, Andrea S. A novel contrast enhancement technique based on cascaded multistep binomial filtering histogram equalization[J]. IEEE Trans. Consum. Electron., 2006, 52(3): 966-974.

二级参考文献27

共引文献42

同被引文献134

引证文献17

二级引证文献121

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部