Dissertation > Excellent graduate degree dissertation topics show

Research on Hyperspectral Image Compression Method Based on Information of Interest

Author: PengWeiMing
Tutor: ZhangJunPing
School: Harbin Institute of Technology
Course: Information and Communication Engineering
Keywords: Hyperspectral image information of interest hierarchical compression method image evaluation
CLC: TP391.41
Type: Master's thesis
Year: 2008
Downloads: 76
Quote: 0
Read: Download Dissertation


With much richer information and higher spectral resolution than multispectral image, hyperspectral image could resolve many problems that multispectral image could not do. But higher spectral resolution is accompanied by a huge volume of image data, which will result in excessive computing time and data complexity for transmission and storage, so it is necessary to compress hyperspectral image. In the most classical compression methods, low frequency information are reserved firstly, high frequency information are usually discarded which is insensitive to us. Because of limit of spatial resolution, some very important information for the application of hyperspectral image that we are interested in is usually belong to high frequency. So a new compression method for hyperspectral image is necessary to carry out which can preserve the information that we are interested in.In this thesis, we do some researches on hyperspectral image compression based on the protection of important information. Four main researches are done in this thesis.1) Analyzing hyperspectral image spatial and spectral correlation and features of our interested information. The strongly correlation is the base of hyperspectral image compression. Features of our interested information include Moments features and spectral absorption index (SAI). They are theoretical foundation for us to extract our interested information.2) Extraction and marking of our interested information. The main extraction methods are spectral derivative and spatial morphological filtering. Marking method is minimum enclosing rectangle (MER). Experiment results show that our method could successfully extract our interested information and mark them.3) Hierarchical compression based on the protection of our interested information. In this part, we classify hyperspectral image into different levels, according to their importance. To different level, we use different compression method. Our experiment based on AVIRIS hyperspectral image San Diego shows: our proposed classification prediction method could construct our most important information with few coding bits. And our bit-plan shifting method could better protect our interested information than usual classical compression methods at the same conditions. 3D-SPIHT method is used to the common information in order to ensure our compression efficiency.4) Hyperspectral reconstruction image evaluation based on target detection. We reconstruct hyperspectral image at 0.1 and 0.2bpp (bits per pixel), using our proposed compression method. The experiment result shows that our reconstruction image could gain better performance in target detection.In this thesis, in order to improve hyperspectral image target detection performance, we proposed a hierarchical compression method based on the protection of information. The experiment result shows that in the same condition, our proposed compression method could improve reconstruction image application performance.

Related Dissertations

  1. Superresolution of Hyperspectral Images Based on Spatial-Spectral Information Coordination,TN911.73
  2. Study on Virtual Detector of Infrared Hyper-Spectral Image,TP391.41
  3. Research on Fusion Algorithm of Hyper Spectral and High Spatial Resolution Remote Sensing Image,TP751
  4. Single Image Light Positioning Based on Render,TP391.41
  5. Hyperspectral Anomaly Target Detection,TP391.41
  6. Hyperspectral image processing platform, Research and Design,TP391.41
  7. Studies on Shijiazhuang Characteristic Streets,F224
  8. Research on Three Dimension Spectral Modeling-Based Hyperspectral Image Compression,TP751.1
  9. The Research on Hyperspctral Remote Sensing Image Segmentation,TP751
  10. Research on Compression Method for Hyperspectral Images Based on Anomaly Signature Protecttion,TP751
  11. Multi-core learning objectives of hyperspectral images interpretation technology research,TP391.41
  12. Research on Hyperspectral Image Compression and Implement on DSP,TP391.41
  13. Research on Methods for Classification and Segmentation of Hyperspectral Images,TP391.41
  14. The Research on Image-Building of District Government of S in Public View,D035.5
  15. Primary IT Interest Group Practice and Exploration,G623.58
  16. Research on Kernel Based Small Target Detection Algorithm of Hyperspectral Imagery,TP391.41
  17. Hyperspectral Anomaly Target Detection,TP391.41
  18. Abnormal hyperspectral image target detection and sub-pixel positioning research,TP751
  19. Research on an Algorithm for Hyperspectral Image Compression Based on Fuzzy Logic,TP391.41
  20. Organic Light-emitting Diode Display Drive Circuit,TN873.3

CLC: > Industrial Technology > Automation technology,computer technology > Computing technology,computer technology > Computer applications > Information processing (information processing) > Pattern Recognition and devices > Image recognition device
© 2012 www.DissertationTopic.Net  Mobile