Understanding visual perceptual learning (VPL) has become increasingly more challenging as new phenomena are discovered with novel stimuli and training paradigms. Although existing models aid our knowledge of critical aspects of VPL, the connections shown by these models between behavioral learning and plasticity across different brain areas are typically superficial. Most models explain VPL as readout from simple perceptual representations to decision areas and are not easily adaptable to explain new findings. Here, we show that a well -known instance of deep neural network (DNN), whereas not designed specifically for VPL, provides a computational model of VPL with enough complexity to be studied at many levels of analyses. After learning ...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Previous studies have shown that perceptual learning can substantially alter the response properties...
With intensive training, human can achieve impressive behavioral improvement on various perceptual t...
Practicing simple visual detection and discrimination tasks improves performance, a signature of adu...
A core problem in visual object learning is using a finite number of images of a new object to accur...
The primate visual system achieves remarkable visual object recognition performance even in brief pr...
Deep neural networks (DNNs) trained on object recognition provide the best current models of high-le...
Training can improve our ability to detect, discriminate or identify sensory stimuli. Despite the pr...
Practice improves the performance in visual tasks, but mechanisms underlying this adult brain plasti...
Humans can learn to abstract and conceptualize the shared visual features defining an object categor...
Contains fulltext : 231147.pdf (Publisher’s version ) (Open Access)Inspired by cor...
The overarching objective of this work is to bridge neuroscience and artificial intelligence to ulti...
Visual perceptual learning is defined as a long-term improvement in performance on a visual task. It...
AbstractOur ability to make fine visual discriminations improves with practice, and so at some level...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Previous studies have shown that perceptual learning can substantially alter the response properties...
With intensive training, human can achieve impressive behavioral improvement on various perceptual t...
Practicing simple visual detection and discrimination tasks improves performance, a signature of adu...
A core problem in visual object learning is using a finite number of images of a new object to accur...
The primate visual system achieves remarkable visual object recognition performance even in brief pr...
Deep neural networks (DNNs) trained on object recognition provide the best current models of high-le...
Training can improve our ability to detect, discriminate or identify sensory stimuli. Despite the pr...
Practice improves the performance in visual tasks, but mechanisms underlying this adult brain plasti...
Humans can learn to abstract and conceptualize the shared visual features defining an object categor...
Contains fulltext : 231147.pdf (Publisher’s version ) (Open Access)Inspired by cor...
The overarching objective of this work is to bridge neuroscience and artificial intelligence to ulti...
Visual perceptual learning is defined as a long-term improvement in performance on a visual task. It...
AbstractOur ability to make fine visual discriminations improves with practice, and so at some level...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Despite great efforts over several decades, our best models of primary visual cortex (V1) still pred...
Previous studies have shown that perceptual learning can substantially alter the response properties...