Similarity-Based Clustering for Enhancing Image Classification Architectures
preprintposted on 2020-11-04, 21:22 authored by Dishant ParikhDishant Parikh, Shambhavi Aggarwal
Convolutional networks are at the center of best in class computer vision applications for a wide assortment of undertakings. Since 2014, profound amount of work began to make better convolutional architectures, yielding generous additions in different benchmarks. Albeit expanded model size and computational cost will, in general, mean prompt quality increases for most undertakings but, the architectures now need to have some additional information to increase the performance. We show empirical evidence that with the amalgamation of content-based image similarity and deep learning models, we can provide the flow of information which can be used in making clustered learning possible. We show how parallel training of sub-dataset clusters not only reduces the cost of computation but also increases the benchmark accuracies by 5-11 percent.
Email Address of Submitting Authordishant30899@gmail.com
Submitting Author's InstitutionG H Patel College of Engineering and Technology
Submitting Author's Country