1. What are the contributions in "Knowledge-based recursive least squares techniques for heterogeneous clutter suppression" ?
In this paper the authors deal with the design of Knowledge-Based adaptive algorithms for the cancellation of heterogeneous clutter.. Then the authors introduce the concept of Knowledge-Based RLS and explain how the a-priori knowledge about the radar operating environment can be adopted for improving the system performance.
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2. What have the authors stated for future works in "Knowledge-based recursive least squares techniques for heterogeneous clutter suppression" ?
Possible future research tracks include the analysis of the KB-RLS in the presence of other real datasets, collected by both ground-based and airborne radars, as well as the problem of devising the optimum function for the forgetting factor variations.
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![Figure 3: 2-D intensity field of the mixed land and sea clutter live data (red are the strongest returns, blue are the weakerreturns). The straight red lines delimitate the selected regions, namely Region 1 ([250◦,270◦], land clutter) and Region 2 ([150◦,170◦], sea clutter).](/figures/figure-3-2-d-intensity-field-of-the-mixed-land-and-sea-31zhx826.png)
