Knowledge-Aided Covariance Matrix Estimation in Spiky Radar Clutter Environments
نویسندگان
چکیده
Space-time adaptive processing (STAP) is an important airborne radar technique used to improve target detection in clutter-limited environments. Effective STAP implementation is dependent on accurate space-time covariance matrix estimation. Heterogeneous clutter, including spiky, spatial clutter variation, violates underlying STAP training assumptions and can significantly degrade corresponding detection performance. This paper develops a spiky, space-time clutter model based on the K-distribution, assesses the resulting impact on STAP performance using traditional methods, and then proposes and evaluates the utility of the knowledge-aided parametric covariance matrix estimation (KAPE) method, a model-based scheme that rapidly converges to better represent spatial variation in clutter properties. Via numerical simulation of an airborne radar scenario operating in a spiky clutter environment, we find substantial improvement in probability of detection (PD) for a fixed probability of false alarm (PFA) for the KAPE method. For example, in the spiky clutter environment considered herein, results indicate a PD of 32% for traditional STAP and in excess of 90% for KAPE at a PFA of 1E-4, with a corresponding difference of 11.5 dB in threshold observed from exceedance analysis. The proposed K-distributed spiky clutter model, and application and assessment of KAPE as an ameliorating STAP technique, contribute to an improved understanding of radar detection in complex clutter environments.
منابع مشابه
Knowledge-Aided STAP Processing for Ground Moving Target Indication Radar Using Multilook Data
Knowledge-aided space-time adaptive processing (KASTAP) using multiple coherent processing interval (CPI) radar data is described. The approach is based on forming earth-based clutter reflectivity maps to provide improved knowledge of clutter statistics in nonhomogeneous terrain environments. The maps are utilized to calculate predicted clutter covariance matrices as a function of range. Using ...
متن کاملKnowledge-Aided Non-Homogeneity Detector for Airborne MIMO Radar STAP
The target detection performance decreases in airborne multiple-input multiple-output (MIMO) radar space-time adaptive processing (STAP) when the training samples contaminated by interference-targets (outliers) signals are used to estimate the covariance matrix. To address this problem, a knowledge-aided (KA) generalized inner product non-homogeneity detector (GIP NHD) is proposed for MIMO-STAP...
متن کاملA STAP Approach for Bistatic Space-Based GMTI Radar
In this paper, we describe a space-time adaptive processing (STAP) approach for bistatic space-based radar (SBR) ground moving target indication (GMTI) systems. A candidate bistatic SBR GMTI system employing a transmitter at medium earth orbit (MEO) and an airborne receiver is defined. To provide enhanced estimation of the clutter statistics, we apply a knowledge-aided STAP approach based on an...
متن کاملRobust adaptive signal processing methods for heterogeneous radar clutter scenarios
This paper addresses the problem of radar target detection in severely heterogeneous clutter environments. Speci0cally, we present the performance of the normalized matched 0lter test in a background of disturbance consisting of clutter having a covariance matrix with known structure and unknown scaling plus background white Gaussian noise. It is shown that when the clutter covariance matrix is...
متن کاملCharacterization of Sea Clutter Based on Estimated Space-time Covariance Matrix from Real Dataset
We propose an estimation method for the space-time covariance matrix of sea clutter to support the application of waveform-agile sensing procedures that rely on accurate estimation of this matrix. The method exploits the special structure of the vectorized states of the scattering function for the dynamical system model governing the temporal evolution of the clutter matrix followed by a multip...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2017