首先从形状、颜色、纹理材质三个主要视觉特性入手,阐述模型的特征描述符,设计三元组视觉特征向量用于神经网络进行模型分类。具体基于感知器神经网络、Hopfield神经网络分别实现了对三维物体的分类。实验表明,基于神经网络的分类器能对基于视觉特征描述的三维物体进行有效识别。
A review on feature descriptors,including shape,color,texture and material,is firstly given in this paper.Then a threedimensional visual vector is designed for neural works to classify 3d models.Classification methods based on perceptron neural network and Hopfield neural network are proposed.Experimental results have shown that,the proposed methods are able to simulate human's visual perception effectively and efficiently.Finally,conclusions are drawn and the future work on fuzzy neural network is introduced.