An algorithm or the neural fusion of IRST & radar for airborne target detection

J. Singh
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引用次数: 2

Abstract

This paper investigates in to the possibility of using a BAM correlating encoding based neural fusion of IRST and radar at the point of the IRST's maximum range. During training phase (in peace time or at a safe place or range), intermittent appearance of a target on IRST display can be recorded in a temporal array. Corresponding intermittent appearance on radar will also be recorded on another array. Treating IRST array as horizontal array and radar array as vertical one, these two binary arrays will be made bipolar by replacing 0s with 1s and multiplied and square or rectangular arrays obtained. A large number of sets can be obtained like this representing the entire representative situations and corresponding square matrices added to form a general weight matrix. Data corresponding to the intermittent appearances of targets and other objects on radar display will be kept in the forms of binary arrays as database. In application phase, if a target is detected through the radar at the maximum range where target appears on the IRST display, radar can be switched off. IRST display will show intermittent appearances of the target, which may be difficult to track or even to discriminate from nearby bird or far off planet/star. The data collected for a number of frames for a single target's estimated intermittent appearance will be stored in an array as binary data. This binary array will be multiplied with the general weight matrix and resulting vertical matrix after thresholding represents an estimated radar data. This approximated radar binary array can be compared with stored radar representations and nearest class can be declared the class of the object present in the scene. As a further improvement, this whole experiment can be performed in a peaceful condition and the estimated radar representation obtained can be compared with exact radar representation and error calculated. Another neural model (like multilayer perceptron) can be used to provide a feedback to correct the errors in the radar estimation. The process basically works as an adaptive filter and predicts a radar array corresponding to the IRST array. The success of the algorithm depends on the training (selecting representative situations) and the implementation methods. Optical implementation with optical associative memories can also be experimented for faster processing.
一种用于机载目标检测的IRST与雷达神经融合算法
本文探讨了利用基于BAM相关编码的IRST与雷达在IRST最大距离点进行神经融合的可能性。在训练阶段(在和平时间或在安全地点或范围内),目标在IRST显示器上的间歇性出现可以记录在时序阵列中。雷达上相应的间歇现象也将记录在另一个阵列上。将IRST阵列作为水平阵列,雷达阵列作为垂直阵列,将这两个二元阵列用0替换为1,相乘得到方形或矩形阵列,使其成为双极阵列。这样可以得到代表整个代表性情况的大量集合,并将相应的方阵相加形成一般的权矩阵。雷达显示的目标和其他物体的间歇出现所对应的数据将以二进制数组的形式作为数据库保存。在应用阶段,如果雷达在目标显示在IRST显示器上的最大距离处检测到目标,则可以关闭雷达。IRST显示器将显示目标的间歇性出现,这可能难以跟踪,甚至难以与附近的鸟类或遥远的行星/恒星区分开来。为单个目标的估计间歇外观的若干帧收集的数据将作为二进制数据存储在数组中。该二值数组将与一般权重矩阵相乘,阈值化后得到的垂直矩阵表示估计的雷达数据。这种近似的雷达二进制阵列可以与存储的雷达表示进行比较,并且可以将最接近的类声明为场景中存在的对象的类。作为进一步改进,整个实验可以在和平条件下进行,并且可以将得到的估计雷达表示与精确雷达表示和计算误差进行比较。另一种神经模型(如多层感知器)可用于提供反馈以纠正雷达估计中的误差。这个过程基本上是一个自适应滤波,并预测与IRST阵列相对应的雷达阵列。算法的成功取决于训练(选择有代表性的情况)和实现方法。采用光联想存储器的光学实现也可以进行实验,以提高处理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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