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Information-theoretic assessment of ASTER super-spectral imagery

机译:ASTER超光谱影像的信息理论评估

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This work focuses on estimating the information conveyed to a user by multi-dimensional digitised signals. The goal is establishing the extent to which an increase in radiometric resolution, or equivalently in signal-to-noise-ratio (SNR), can increase the amount of information available to users. Lossless data compression and noise modeling are exploited to measure the "useful" information content of the data. In fact, the bit-rate achieved by the reversible compression process takes into account both the contribution of the "observation" noise, i.e. information regarded as statistical uncertainty, whose relevance is null to a user, and the intrinsic information of hypothetically noise-free samples. Once the parametric model of the noise, assumed to be possibly non-Gaussian, has been preliminarily estimated, the mutual information between noise-free signal and recorded noisy signal is easily estimated. However, it is also desirable to know what is the amount of information that the digitised samples would convey if they were ideally recorded without observation noise. Therefore, an entropy model of the source is defined and such a model is inverted to yield an estimate of the information content of the noise-free source from the code rate and the noise model. Results are reported and discussed on true superspectral data (14 spectral bands) recorded by the ASTER imaging radiometer.
机译:这项工作着重于估计通过多维数字化信号传达给用户的信息。目标是确定辐射分辨率或同等信噪比(SNR)的提高可以增加用户可用信息量的程度。利用无损数据压缩和噪声建模来测量数据的“有用”信息内容。实际上,通过可逆压缩过程实现的比特率考虑了“观察”噪声(即被视为统计不确定性的信息,其对用户的相关性为零)的贡献以及假设无噪声的固有信息样品。一旦初步估计了可能是非高斯噪声的参数模型,就可以轻松估计出无噪声信号与记录的有噪信号之间的相互信息。但是,还希望知道如果理想地记录了数字化样本而没有观察到的噪声,它们将传达的信息量是多少。因此,定义了源的熵模型,并且将这种模型反转以从编码率和噪声模型得出无噪声源的信息内容的估计。报告并讨论了由ASTER成像辐射计记录的真实超光谱数据(14个光谱带)的结果。

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