WHERE IS THE EMOTION? DISSECTING A MULTI-GAP NETWORK FOR IMAGE EMOTION CLASSIFICATION
Lucinda Lim, Huai-Qian Khor, Phatcharawat Chaemchoy, John See, Lai-Kuan Wong
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 06:17
Image emotion recognition has become an increasingly popular research domain in the area of image processing and affective computing. Despite fast-improving classification performance in this task, the understanding and interpretability of its performance are still lacking as there are limited studies on which part of an image would invoke a particular emotion. In this work, we propose a Multi-GAP deep neural network for image emotion classification, which is extensible to accommodate multiple streams of information. We also incorporate feature dependency into our network blocks by adding a bi-directional GRU network to learn transitional features. We report extensive results on the variants of our proposed network and provide valuable perspectives into the class-activated regions via Grad-CAM, and network depth contributions by truncation strategy.