Chris North

Abstract

Making sense of large collections of images is difficult. Dimension reductions (DR) assist by organizing images in a 2D space based on similarities, but provide little support for explaining why images were placed together or apart in the 2D space. Additionally, they do not provide support for modifying and updating the 2D space to explore new relationships and organizations of images. To address these problems, we present an interactive DR method for images that uses visual features extracted by a deep neural network to project the images into 2D space and provides visual explanations of image features that contributed to the 2D location. In addition, it allows people to directly manipulate the 2D projection space to define alternative relationships and explore subsequent projections of the images. With an iterative cycle of semantic interaction and explainable-AI feedback, people can explore complex visual relationships in image data. Our approach to human-AI interaction integrates visual knowledge from both human mental models and pre-trained deep neural models to explore image data. We demonstrate our method through examples with collaborators in agricultural science.

Huimin HanRebecca FaustBrian Felipe Keith NorambuenaRitvik PrabhuTimothy SmithSong LiChris North:
Explainable Interactive Projections for Image Data. ISVC (1) 2022: 77-90

People

Chris North


Publication Details

Date of publication:
December 11, 2022
Conference:
Advances in Visual Computing
Page number(s):
77-90