Abstract:
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate problems. By considering the physical properties of a mixed spectrum, this l...Show MoreMetadata
Abstract:
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate problems. By considering the physical properties of a mixed spectrum, this letter introduces unmixing-based denoising, a supervised methodology representing any pixel as a linear combination of reference spectra in a hyperspectral scene. Such spectra are related to some classes of interest, and exhibit negligible noise influences, as they are averaged over areas for which ground truth is available. After the unmixing process, the residual vector is mostly composed by the contributions of uninteresting materials, unwanted atmospheric influences and sensor-induced noise, and is thus ignored in the reconstruction of each spectrum. The proposed method, in spite of its simplicity, is able to remove noise effectively for spectral bands with both low and high signal-to-noise ratio. Experiments show that this method could be used to retrieve spectral information from corrupted bands, such as the ones placed at the edge between ultraviolet and visible light frequencies, which are usually discarded in practical applications. The proposed method achieves better results in terms of visual quality in comparison to competitors, if the mean squared error is kept constant. This leads to questioning the validity of mean squared error as a predictor for image quality in remote sensing applications.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 11, Issue: 1, January 2014)
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- IEEE Keywords
- Index Terms
- Spectral Unmixing ,
- Signal-to-noise ,
- Mean Square Error ,
- Image Quality ,
- Spectral Bands ,
- Prediction Quality ,
- Visual Quality ,
- Reference Spectra ,
- Interesting Class ,
- Residual Vector ,
- Combination Of Spectra ,
- Mixed Spectra ,
- Image Processing ,
- Image Reconstruction ,
- Endmembers ,
- High Signal-to-noise Ratio ,
- Low Signal-to-noise Ratio ,
- Classification Of Areas ,
- Minimum Mean Square Error ,
- near-UV ,
- Denoising Algorithm ,
- Non-negative Least Squares ,
- Airborne Visible/Infrared Imaging Spectrometer ,
- Portion Of Spectrum ,
- Chromophoric Dissolved Organic Matter ,
- Hyperspectral Sensors ,
- Indian Pines Dataset ,
- Set Of Spectra
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Spectral Unmixing ,
- Signal-to-noise ,
- Mean Square Error ,
- Image Quality ,
- Spectral Bands ,
- Prediction Quality ,
- Visual Quality ,
- Reference Spectra ,
- Interesting Class ,
- Residual Vector ,
- Combination Of Spectra ,
- Mixed Spectra ,
- Image Processing ,
- Image Reconstruction ,
- Endmembers ,
- High Signal-to-noise Ratio ,
- Low Signal-to-noise Ratio ,
- Classification Of Areas ,
- Minimum Mean Square Error ,
- near-UV ,
- Denoising Algorithm ,
- Non-negative Least Squares ,
- Airborne Visible/Infrared Imaging Spectrometer ,
- Portion Of Spectrum ,
- Chromophoric Dissolved Organic Matter ,
- Hyperspectral Sensors ,
- Indian Pines Dataset ,
- Set Of Spectra
- Author Keywords