| 000 | 03237 a2200193 4500 | ||
|---|---|---|---|
| 003 | Nust | ||
| 005 | 20260206191939.0 | ||
| 040 | _cNust | ||
| 082 | _a621.382,JAM | ||
| 100 |
_aJameel, Amin _9133113 |
||
| 245 |
_aEnhancement of Image Fusion Techniques / _cAmina Jameel |
||
| 260 |
_aRawalpindi, _bMCS (NUST), _c2014 |
||
| 300 | _axvii, 89 p | ||
| 505 | _aImage fusion is the process of combining relevant information from several images into one image. The final output image provides more information than any of the single image. The benefits of image fusion include: extended spatial and temporal coverage, extended range of operation, increased reliability, robust system performance, reduced uncertainty, higher signal to noise ratio, compact representation of information, reduction in the amount of data to be processed and creation of new images that are more suitable for human/machine perception, for further image-processing tasks (such as segmentation, object detection or target recognition) and applications (such as remote sensing, medical imaging, surveillance systems etc). This research is concerned with the problem of multisensor pixel-level image fusion. The aim was to develop reliable schemes that represent the visual information, obtained from a number of different imaging sensors, in a single fused image without the introduction of distortion or loss of information. In all, six different pixel-level image fusion schemes are proposed. The first scheme uses compressive sensing principle to fuse visible and infrared images with the aim of achieving reasonable fusion performance at very low complexity. This novel entropy dependent image fusion scheme adaptively adjusts the number of compressive measurements depending on the amount of information. An improved guided image fusion for magnetic resonance and computed tomography imaging is proposed as the second fusion approach. The next three fusion schemes deal with another important aspect in the design of pixel-level image fusion algorithms i.e. robustness against noise. The aim was to design multi-focus image fusion algorithms that provide acceptable performance in the presence of noise. Three different algorithms for three different scenarios of multi-focus fusion are considered: static, dynamic and all in focus fusion. The proposed schemes not only preserve the details in the fused image, they are also efficient in reducing noise. The last fusion scheme uses a guided filter and intensity hue saturation based pan-sharpening approach to fuse satellite images. The scheme combines the high resolution uni-spectral and low-resolution multispectral images taking into account the intensity levels and spatial information. Simulation results when analysed visually and quantitatively depict the significance of the proposed schemes compared to existing schemes. The results of all the proposed image fusion schemes are demonstrated through examples of fused imagery and results of objective tests against conventional image fusion schemes. | ||
| 650 |
_aPhD Electrical Engineering Thesis _9133107 |
||
| 651 |
_aPhD EE Thesis _9133108 |
||
| 700 |
_aSupervised by Dr. Abdul Ghafoor _9132894 |
||
| 942 |
_cTHE _2ddc |
||
| 999 |
_c217118 _d217118 |
||