학술논문

Learning-Based Multiple Pooling Fusion in Multi-View Convolutional Neural Network for 3D Model Classification and Retrieval
Document Type
Article
Source
JIPS(Journal of Information Processing Systems). Oct 31, 2019 15(5):1179
Subject
Learning-Based Multiple Pooling Fusion
Multi-View Convolutional Neural Network
3D Model Classification
3D Model Retrieval
Language
English
ISSN
1976-913x
Abstract
We design an ingenious view-pooling method named learning-based multiple pooling fusion (LMPF), and apply it to multi-view convolutional neural network (MVCNN) for 3D model classification or retrieval. By this means, multi-view feature maps projected from a 3D model can be compiled as a simple and effective feature descriptor. The LMPF method fuses the max pooling method and the mean pooling method by learning a set of optimal weights. Compared with the hand-crafted approaches such as max pooling and mean pooling, the LMPF method can decrease the information loss effectively because of its “learning” ability. Experiments on ModelNet40 dataset and McGill dataset are presented and the results verify that LMPF can outperform those previous methods to a great extent.