It is often difficult to obtain sufficient training data for adaptive signal detection, which is required to calculate the unknown noise covariance matrix. Additionally, interference is frequently present, which complicates the detecting issue. We provide a two-step method, termed interference cancellation before detection (ICBD), to address the issue of signal detection in the unknown Gaussian noise and subspace interference. The first involves projecting the test and training data to the interference-orthogonal subspace in order to suppress the interference. Utilizing traditional adaptive detector design ideas is the next stage. Due to the smaller dimension of the projected data, the ICBD-based detectors can function with little training data. The ICBD has two additional benefits over traditional detectors. Lower computational burden and proper operation with interference being in the training data are two additional benefits of ICBD-based detectors over conventional ones. We also give the statistical properties of the ICBD-based detectors and demonstrate their equivalence with the traditional ones in the special case of a large amount of training data containing no interference
翻译:往往很难获取足够的训练数据进行自适应信号检测,需要计算未知噪声协方差矩阵。另外,干扰经常存在,这使得检测问题更加复杂。我们提供了一种两步方法,称为先干扰消除再检测(ICBD),来解决未知高斯噪声和亚空间干扰中的信号检测问题。第一步包括将测试和训练数据投影到干扰正交子空间以抑制干扰。接下来是利用传统自适应检测器设计思想的阶段。由于投影数据的较小维度,基于ICBD的探测器可以用少量训练数据工作。 ICBD相对于传统探测器还具有两个额外优点。较低的计算负担和适当地处理在训练数据中存在干扰的情况。我们还给出了ICBD探测器的统计特性,并证明了它们在大量训练数据中不包含干扰的特殊情况下与传统探测器的等价性。