2022
DOI: 10.1007/s10462-021-10130-z
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Brain-inspired models for visual object recognition: an overview

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Cited by 10 publications
(7 citation statements)
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“…To achieve a more human-like behavior in artificial neural networks, it is necessary to increase layers and neurons in the networks, thereby enhancing their transfer learning ability. Figure 1a illustrates a schematic diagram of pre-learning method and cross-regional hierarchical structure in biological brain 37 40 . The artificial neural network realized by imitating this structure shows great ability after extensive basic learning (pre-learning) and achieves high accuracy in untrained tasks, which is very similar to human learning ability.…”
Section: Resultsmentioning
confidence: 99%
“…To achieve a more human-like behavior in artificial neural networks, it is necessary to increase layers and neurons in the networks, thereby enhancing their transfer learning ability. Figure 1a illustrates a schematic diagram of pre-learning method and cross-regional hierarchical structure in biological brain 37 40 . The artificial neural network realized by imitating this structure shows great ability after extensive basic learning (pre-learning) and achieves high accuracy in untrained tasks, which is very similar to human learning ability.…”
Section: Resultsmentioning
confidence: 99%
“…All participants yielded qualitatively similar results ( Supplementary Figures 9-10 ). This proves that our EEG dataset allows for the successful training of DNNs in an end-to-end fashion, paving the way for a stronger symbiosis between brain data and deep learning models benefitting both neuroscientists interested in building better models of the brain (Seeliger et al, 2021; Khosla et al, 2021; Allen et al, 2021) and computer scientists interested in creating better performing and more brain-like artificial intelligence algorithms through inductive biases from biological intelligence (Sinz et al, 2019; Hassabis et al, 2017; Ullman, 2019; Toneva & Wehbe, 2019; Yang et al, 2022).…”
Section: Resultsmentioning
confidence: 99%
“…The end-toend approach opens the doors to training complex computational algorithms directly with brain data, potentially leading to models which more closely mimic the internal representation of the visual system (Sinz et al, 2019;Allen et al, 2021). This will in turn make it possible for computer scientists to use the neural representations of biological systems as inductive biases to improve artificial systems under the assumption that increasing the brain-likeness of computer models could increase their performance in tasks at which humans excel (Sinz et al, 2019;Hassabis et al, 2017;Ullman, 2019;Toneva & Wehbe, 2019;Yang et al, 2022).…”
Section: End-to-end Encodingmentioning
confidence: 99%
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“…It is assumed that the primate visual system is organized into two separate processing pathways in the visual cortex, namely, the dorsal pathway and the ventral pathway. While the dorsal pathway is responsible for the spatial recognition of objects as well as actions and manipulations such as grasping, the ventral pathway is responsible for recognizing the type of object based on its form or motion [52]. Bonner et al [6] recently showed that the sensory coding of objects in the ventral cortex of the human brain is related to statistical embeddings of object or word co-occurrences.…”
Section: Preliminariesmentioning
confidence: 99%