Mitra Vikramjit, Wang Chia-Jiu, Banerjee Satarupa
Department of Electrical and Computer Engineering, University of Maryland, College Park, MD 20742, USA.
IEEE Trans Neural Netw. 2006 May;17(3):717-31. doi: 10.1109/TNN.2006.873279.
This paper presents a neural network architecture using a support vector machine (SVM) as an inference engine (IE) for classification of light detection and ranging (Lidar) data. Lidar data gives a sequence of laser backscatter intensities obtained from laser shots generated from an airborne object at various altitudes above the earth surface. Lidar data is pre-filtered to remove high frequency noise. As the Lidar shots are taken from above the earth surface, it has some air backscatter information, which is of no importance for detecting underwater objects. Because of these, the air backscatter information is eliminated from the data and a segment of this data is subsequently selected to extract features for classification. This is then encoded using linear predictive coding (LPC) and polynomial approximation. The coefficients thus generated are used as inputs to the two branches of a parallel neural architecture. The decisions obtained from the two branches are vector multiplied and the result is fed to an SVM-based IE that presents the final inference. Two parallel neural architectures using multilayer perception (MLP) and hybrid radial basis function (HRBF) are considered in this paper. The proposed structure fits the Lidar data classification task well due to the inherent classification efficiency of neural networks and accurate decision-making capability of SVM. A Bayesian classifier and a quadratic classifier were considered for the Lidar data classification task but they failed to offer high prediction accuracy. Furthermore, a single-layered artificial neural network (ANN) classifier was also considered and it failed to offer good accuracy. The parallel ANN architecture proposed in this paper offers high prediction accuracy (98.9%) and is found to be the most suitable architecture for the proposed task of Lidar data classification.
本文提出了一种神经网络架构,该架构使用支持向量机(SVM)作为推理引擎(IE)来对光探测和测距(Lidar)数据进行分类。Lidar数据给出了一系列激光后向散射强度,这些强度是从地球表面上方不同高度的机载物体产生的激光脉冲中获得的。Lidar数据经过预滤波以去除高频噪声。由于Lidar脉冲是从地球表面上方获取的,它包含一些空气后向散射信息,而这些信息对于检测水下物体并不重要。因此,从数据中消除了空气后向散射信息,随后选择该数据的一个片段来提取用于分类的特征。然后使用线性预测编码(LPC)和多项式逼近对其进行编码。由此生成的系数用作并行神经架构两个分支的输入。从两个分支获得的决策进行向量相乘,结果输入到基于SVM的IE中,该IE给出最终推理。本文考虑了使用多层感知器(MLP)和混合径向基函数(HRBF)的两种并行神经架构。由于神经网络固有的分类效率和SVM准确的决策能力,所提出的结构非常适合Lidar数据分类任务。对于Lidar数据分类任务,考虑了贝叶斯分类器和二次分类器,但它们未能提供高预测准确率。此外,还考虑了单层人工神经网络(ANN)分类器,它也未能提供良好的准确率。本文提出的并行ANN架构提供了高预测准确率(98.9%),并且被发现是最适合所提出的Lidar数据分类任务的架构。