The Impact of Visual Segmentation on Lexical Word Recognition
Matthew Termuende, Kevin Larson, Miguel Nacenta

TL;DR
This study investigates how various visual segmentation cues in text affect word recognition speed, finding that such cues generally slow down lexical decision tasks, with implications for reading theory and text visualization practices.
Contribution
The paper provides empirical evidence on the impact of five visual segmentation methods on word recognition, highlighting their slowing effect and suggesting new directions for understanding visual text processing.
Findings
Visual segmentation cues slow down word recognition.
Different cues have varying degrees of impact.
Implications for text visualization without performance loss.
Abstract
When a reader encounters a word in English, they split the word into smaller orthographic units in the process of recognizing its meaning. For example, "rough", when split according to phonemes, is decomposed as r-ou-gh (not as r-o-ugh or r-ough), where each group of letters corresponds to a sound. Since there are many ways to segment a group of letters, this constitutes a computational operation that has to be solved by the reading brain, many times per minute, in order to achieve the recognition of words in text necessary for reading. We hypothesized that providing segmentation information in the text itself could help the reading process by reducing its computational cost. In this paper we explore whether and how different visual interventions could communicate segmentation information for reading and word recognition. We ran a series of pre-registered lexical decision experiments…
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