Saripalli Sri SravyaK. Sri Rama KrishnaPallikonda Sarah Suhasini
Deep learning algorithms, in particular Convolutional Neural Networks have made notable accomplishments in many large-scale image classification tasks in the past decade. In this paper, image classification is performed using Supervised Convolutional Neural Network (SCNN). In supervised learning model, algorithm learns on a labeled dataset. SCNN architecture is built with 15 layers viz, input layer, 9 middle layers and 5 final layers. Two datasets of different sizes are tested on SCNN framework on single CPU. With CIFAR10 dataset of 60000 images the network yielded an accuracy of 73% taking high processing time, while for 3000 images taken from MIO-TCD dataset resulted 96% accuracy with less computational time.
Tupurani VirajithaSrikanth RyaliA. YashwanthB. ArchanaLavanya AddepalliK. Sai Preetam
P. Lakshmi PrasannaD Raghava LavanyaT. Tulasi SasidharB. Sekhar Babu