MLGRJul 12, 2012

Hypothesis Testing in Speckled Data with Stochastic Distances

arXiv:1207.2959v1128 citations
Originality Incremental advance
AI Analysis

This work addresses image analysis for domains like sonar and SAR affected by speckle noise, offering an incremental improvement in hypothesis testing methods.

The paper tackles the problem of hypothesis testing in speckled data by deriving and comparing eight stochastic distances, finding that tests based on the triangular distance have empirical size closest to theoretical values and near-optimal power, making it the safest choice.

Images obtained with coherent illumination, as is the case of sonar, ultrasound-B, laser and Synthetic Aperture Radar -- SAR, are affected by speckle noise which reduces the ability to extract information from the data. Specialized techniques are required to deal with such imagery, which has been modeled by the G0 distribution and under which regions with different degrees of roughness and mean brightness can be characterized by two parameters; a third parameter, the number of looks, is related to the overall signal-to-noise ratio. Assessing distances between samples is an important step in image analysis; they provide grounds of the separability and, therefore, of the performance of classification procedures. This work derives and compares eight stochastic distances and assesses the performance of hypothesis tests that employ them and maximum likelihood estimation. We conclude that tests based on the triangular distance have the closest empirical size to the theoretical one, while those based on the arithmetic-geometric distances have the best power. Since the power of tests based on the triangular distance is close to optimum, we conclude that the safest choice is using this distance for hypothesis testing, even when compared with classical distances as Kullback-Leibler and Bhattacharyya.

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