Ermek Kapushev

2papers

2 Papers

CVNov 28, 2016
Large-Scale Shape Retrieval with Sparse 3D Convolutional Neural Networks

Alexandr Notchenko, Ermek Kapushev, Evgeny Burnaev

In this paper we present results of performance evaluation of S3DCNN - a Sparse 3D Convolutional Neural Network - on a large-scale 3D Shape benchmark ModelNet40, and measure how it is impacted by voxel resolution of input shape. We demonstrate comparable classification and retrieval performance to state-of-the-art models, but with much less computational costs in training and inference phases. We also notice that benefits of higher input resolution can be limited by an ability of a neural network to generalize high level features.

MSSep 5, 2016
GTApprox: surrogate modeling for industrial design

Mikhail Belyaev, Evgeny Burnaev, Ermek Kapushev et al.

We describe GTApprox - a new tool for medium-scale surrogate modeling in industrial design. Compared to existing software, GTApprox brings several innovations: a few novel approximation algorithms, several advanced methods of automated model selection, novel options in the form of hints. We demonstrate the efficiency of GTApprox on a large collection of test problems. In addition, we describe several applications of GTApprox to real engineering problems.