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Aditya Upadhyayula; Neil Cohn – Cognitive Science, 2025
Theories of visual narrative comprehension have advocated for a hierarchical grammar-based comprehension mechanism, but only limited work has investigated this hierarchy. Here, we provide a computational framework inspired by computational psycholinguistics to address hierarchy in visual narratives. The predictions generated by this framework were…
Descriptors: Visual Perception, Comprehension, Vertical Organization, Story Grammar
De Deyne, Simon; Navarro, Danielle J.; Collell, Guillem; Perfors, Andrew – Cognitive Science, 2021
One of the main limitations of natural language-based approaches to meaning is that they do not incorporate multimodal representations the way humans do. In this study, we evaluate how well different kinds of models account for people's representations of both concrete and abstract concepts. The models we compare include unimodal distributional…
Descriptors: Models, Definitions, Concept Formation, Linguistics
Wood, Justin N.; Wood, Samantha M. W. – Cognitive Science, 2018
How do newborns learn to recognize objects? According to temporal learning models in computational neuroscience, the brain constructs object representations by extracting smoothly changing features from the environment. To date, however, it is unknown whether newborns depend on smoothly changing features to build invariant object representations.…
Descriptors: Neonates, Animals, Recognition (Psychology), Brain
Hsiao, Janet H.; Cheung, Kit – Cognitive Science, 2016
In Chinese orthography, the most common character structure consists of a semantic radical on the left and a phonetic radical on the right (SP characters); the minority, opposite arrangement also exists (PS characters). Recent studies showed that SP character processing is more left hemisphere (LH) lateralized than PS character processing.…
Descriptors: Chinese, Orthographic Symbols, Word Recognition, Brain Hemisphere Functions
Nyamsuren, Enkhbold; Taatgen, Niels A. – Cognitive Science, 2013
Complex problem solving is often an integration of perceptual processing and deliberate planning. But what balances these two processes, and how do novices differ from experts? We investigate the interplay between these two in the game of SET. This article investigates how people combine bottom-up visual processes and top-down planning to succeed…
Descriptors: Visual Perception, Cognitive Processes, Eye Movements, Regression (Statistics)
Hsiao, Janet H.; Lam, Sze Man – Cognitive Science, 2013
Through computational modeling, here we examine whether visual and task characteristics of writing systems alone can account for lateralization differences in visual word recognition between different languages without assuming influence from left hemisphere (LH) lateralized language processes. We apply a hemispheric processing model of face…
Descriptors: Brain Hemisphere Functions, Phoneme Grapheme Correspondence, Word Recognition, Visual Perception
Lacroix, Joyca P. W.; Murre, Jaap M. J.; Postma, Eric O.; van den Herik, H. Jaap – Cognitive Science, 2006
The natural input memory (NAM) model is a new model for recognition memory that operates on natural visual input. A biologically informed perceptual preprocessing method takes local samples (eye fixations) from a natural image and translates these into a feature-vector representation. During recognition, the model compares incoming preprocessed…
Descriptors: Recognition (Psychology), Models, Visual Perception, Eye Movements
Olman, Cheryl; Kersten, Daniel – Cognitive Science, 2004
A successful vision system must solve the problem of deriving geometrical information about three-dimensional objects from two-dimensional photometric input. The human visual system solves this problem with remarkable efficiency, and one challenge in vision research is to understand how neural representations of objects are formed and what visual…
Descriptors: Vision, Cognitive Processes, Information Utilization, Classification

Sabbah, Daniel – Cognitive Science, 1985
Summarizes an initial foray in tackling artificial intelligence problems using a connectionist approach. The task chosen is visual recognition of Origami objects, and the questions answered are how to construct a connectionist network to represent and recognize projected Origami line drawings and the advantages such an approach would have. (30…
Descriptors: Artificial Intelligence, Cognitive Processes, Computer Graphics, Geometry