Greenberg S, Guterman H
Appl Opt. 1996 Aug 10;35(23):4598-609. doi: 10.1364/AO.35.004598.
We describe the application of the multilayer perceptron (MLP) network and a version of the adaptive resonance theory version 2-A (ART 2-A) network to the problem of automatic aerial image recognition (AAIR). The classification of aerial images, independent of their positions and orientations, is required for automatic tracking and target recognition. Invariance is achieved by the use of different invariant feature spaces in combination with supervised and unsupervised neural networks. The performance of neural-network-based classifiers in conjunction with several types of invariant AAIR global features, such as the Fourier-transform space, Zernike moments, central moments, and polar transforms, are examined. The advantages of this approach are discussed. The performance of the MLP network is compared with that of a classical correlator. The MLP neural-network correlator outperformed the binary phase-only filter (BPOF) correlator. It was found that the ART 2-A distinguished itself with its speed and its low number of required training vectors. However, only the MLP classifier was able to deal with a combination of shift and rotation geometric distortions.
我们描述了多层感知器(MLP)网络和自适应共振理论2-A版(ART 2-A)网络在自动航空图像识别(AAIR)问题中的应用。自动跟踪和目标识别需要对航空图像进行分类,且与它们的位置和方向无关。通过将不同的不变特征空间与监督和无监督神经网络相结合来实现不变性。研究了基于神经网络的分类器与几种类型的不变AAIR全局特征(如傅里叶变换空间、泽尼克矩、中心矩和极坐标变换)相结合的性能。讨论了这种方法的优点。将MLP网络的性能与经典相关器的性能进行了比较。MLP神经网络相关器的性能优于仅二元相位滤波器(BPOF)相关器。结果发现,ART 2-A以其速度和所需训练向量数量少而脱颖而出。然而,只有MLP分类器能够处理平移和旋转几何失真的组合。