Abstract

Aerial images are frequently used in geospatial analysis to inform responses to crises and disasters but can pose unique challenges for visual search when they contain low resolution, degraded information about color, and small object sizes. Aerial image analysis is often performed by humans, but machine learning approaches are being developed to complement manual analysis. To date, however, relatively little work has explored how humans perform visual search on these tasks, and understanding this could ultimately help enable human-machine teaming. We designed a set of studies to understand what features of an aerial image make visual search difficult for humans and what strategies humans use when performing these tasks. Across two experiments, we tested human performance on a counting task with a series of aerial images and examined the influence of features such as target size, location, color, clarity, and number of targets on accuracy and search strategies. Both experiments presented trials consisting of an aerial satellite image; participants were asked to find all instances of a search template in the image. Target size was consistently a significant predictor of performance, influencing not only accuracy of selections but the order in which participants selected target instances in the trial. Experiment 2 demonstrated that the clarity of the target instance and the match between the color of the search template and the color of the target instance also predicted accuracy. Furthermore, color also predicted the order of selecting instances in the trial. These experiments establish not only a benchmark of typical human performance on visual search of aerial images but also identify several features that can influence the task difficulty level for humans. These results have implications for understanding human visual search on real-world tasks and when humans may benefit from automated approaches.

Highlights

  • After the 2010 Haiti earthquake, aerial imagery facilitated damage assessment by allowing hundreds of crowdsourced workers to assess high resolution images of buildings and produce post-disaster damage maps (World Bank et al, 2010)

  • While the number of targets in a trial was not a significant predictor of correctly identifying target instances, it was a significant predictor of making a false positive selection in the trial, and false positives were more likely when there was a smaller number of targets

  • The present study examined an aerial image visual search task for which machine learning approaches are currently being developed and identified several image features that impact human performance and search strategies

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Summary

Introduction

After the 2010 Haiti earthquake, aerial imagery facilitated damage assessment by allowing hundreds of crowdsourced workers to assess high resolution images of buildings and produce post-disaster damage maps (World Bank et al, 2010). While error rates in the field of geospatial analysis may be unclear, in the field of radiology – another domain in which imagery analysis is used to inform critical decisions – false positives in disease diagnosis occur as often as 25% of the time, leading to unnecessary invasive procedures that can affect clinical outcomes (Anbil and Ricci, 2020). Like the recent incorporation and increasing adoption of artificial intelligence into radiology, advances in machine learning and image recognition may be applied to geospatial information to complement manual analysis (Traylor, 2019; Arthur et al, 2020). Complex object recognition and visual search tasks like aerial image analysis will likely require a “human-in-the-loop” system, the goal of which will be to leverage the strengths of both humans and machines (Arthur et al, 2020). A robust understanding of how humans perform these complex visual tasks, and where they fail, will be important for building successful human-machine teams

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