Sumana T.

2papers

2 Papers

CVFeb 26, 2022
Symmetric Convolutional Filters: A Novel Way to Constrain Parameters in CNN

Harish Agrawal, Sumana T., S. K. Nandy

We propose a novel technique to constrain parameters in CNN based on symmetric filters. We investigate the impact on SOTA networks when varying the combinations of symmetricity. We demonstrate that our models offer effective generalisation and a structured elimination of redundancy in parameters. We conclude by comparing our method with other pruning techniques.

LGJul 20, 2016
On the Modeling of Error Functions as High Dimensional Landscapes for Weight Initialization in Learning Networks

Julius, Gopinath Mahale, Sumana T. et al.

Next generation deep neural networks for classification hosted on embedded platforms will rely on fast, efficient, and accurate learning algorithms. Initialization of weights in learning networks has a great impact on the classification accuracy. In this paper we focus on deriving good initial weights by modeling the error function of a deep neural network as a high-dimensional landscape. We observe that due to the inherent complexity in its algebraic structure, such an error function may conform to general results of the statistics of large systems. To this end we apply some results from Random Matrix Theory to analyse these functions. We model the error function in terms of a Hamiltonian in N-dimensions and derive some theoretical results about its general behavior. These results are further used to make better initial guesses of weights for the learning algorithm.