Title of article :
Automatic Visual Sentiment Analysis with Convolution Neural Network
Author/Authors :
Desai, N. Department of IT - SRKREC, Bhimavaram, A.P, India , Venkatramana, S. Department of IT - SRKREC, Bhimavaram, A.P, India , Sekhar, B. V. D. S. Department of IT - SRKREC, Bhimavaram, A.P, India
Abstract :
There is strong demand for the application of automated sentiment analysis to visual and text contents
in today’s digital world so as to significantly reveal people’s feelings, opinions, and emotions through
texts, images, and videos in popular social networks. However, conventional visual sentimental
analysis has been subject to some drawbacks including low accuracy and difficulty to detect people’s
opinions. In addition, a considerable number of images generated and uploaded every day across the
world complicate the already given problem. This paper aims to resolve the problems of visual
sentiment analysis using deep-learning Convolution Neural Network (CNN) and Affective Regions
(ARs) approach to achieve comprehensible sentiment reports with high accuracy.
Keywords :
Affective region , Convolution neural networks , Sentiment classification , Visual sentiment analysis
Journal title :
International Journal of Industrial Engineering and Production Research