Khandelwal, Pulkit, et al. “Benchmarking Human Performance in Semi-Automated Image Segmentation”. Interacting With Computers, vol. 32, no. 3, 2020, pp. 233-45, https://doi.org/10.1093/iwcomp/iwaa017.

Genre

  • Journal Article
Contributors
Author: Khandelwal, Pulkit
Author: Power, Christopher
Author: Eramian, Mark
Author: Rau, Stephen
Date Issued
2020
Date Published Online
2020-08-11
Abstract

Semi-automated segmentation algorithms hold promise for improving extraction and identification of objects in images such as tumors in medical images of human tissue, counting plants or flowers for crop yield prediction or other tasks where object numbers and appearance vary from image to image. By blending markup from human annotators to algorithmic classifiers, the accuracy and reproducability of image segmentation can be raised to very high levels. At least, that is the promise of this approach, but the reality is less than clear. In this paper, we review the state-of-the-art in semi-automated image segmentation performance assessment and demonstrate it to be lacking the level of experimental rigour needed to ensure that claims about algorithm accuracy and reproducability can be considered valid. We follow this review with two experiments that vary the type of markup that annotators make on images, either points or strokes, in tightly controlled experimental conditions in order to investigate the effect that this one particular source of variation has on the accuracy of these types of systems. In both experiments, we found that accuracy substantially increases when participants use a stroke-based interaction. In light of these results, the validity of claims about algorithm performance are brought into sharp focus, and we reflect on the need for a far more control on variables for benchmarking the impact of annotators and their context on these types of systems.

Language

  • English
Funding Note
Mathematics of Information Technology and Complex Systems (MITACS) Globallink Program
Page range
233-245
Host Title
Interacting with Computers
Volume
32
Issue
3
ISSN
0953-5438
1873-7951