The paper proposes a procedure to assess the aliasing effects that may produce distortions on remote sensing images acquired by hyper-spectral push-broom sensors and that arise because of sampling. Real images recorded over different targets at a resolution that is high for the sensor under investigation are used for the analysis. A model for the system modulation transfer function of PRISM hyper-spectral push-broom sensor is developed by taking into account the different contributions due to optical layout, electronics, detector, satellite motion. By using the sensor model, the high resolution images are pre-filtered and spatially re-sampled in order to obtain simulated images of the sensor. Such images are compared with those obtained by an ideal pre-filtering and re-sampling process in order to evidence possible aliasing effects. Quantitative indexes are adopted to assess the presence of aliasing. Digital filtering is adopted to mitigate aliasing effects; to this aim a multi-resolution filter and a fuzzy filter are evaluated. Quantitative and qualitative results show that the proposed filters are effective in aliasing mitigation with negligible penalties on spatial resolution.
Aliasing Assessment and Mitigation of PRISM Hyperspectral Sensor Simulated Images
B Aiazzi;S Baronti;L Santurri;
2003
Abstract
The paper proposes a procedure to assess the aliasing effects that may produce distortions on remote sensing images acquired by hyper-spectral push-broom sensors and that arise because of sampling. Real images recorded over different targets at a resolution that is high for the sensor under investigation are used for the analysis. A model for the system modulation transfer function of PRISM hyper-spectral push-broom sensor is developed by taking into account the different contributions due to optical layout, electronics, detector, satellite motion. By using the sensor model, the high resolution images are pre-filtered and spatially re-sampled in order to obtain simulated images of the sensor. Such images are compared with those obtained by an ideal pre-filtering and re-sampling process in order to evidence possible aliasing effects. Quantitative indexes are adopted to assess the presence of aliasing. Digital filtering is adopted to mitigate aliasing effects; to this aim a multi-resolution filter and a fuzzy filter are evaluated. Quantitative and qualitative results show that the proposed filters are effective in aliasing mitigation with negligible penalties on spatial resolution.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


