Digital twin studies for reverse engineering the origins of visual intelligence
What are the core learning algorithms in brains? Nativists propose that intelligence emerges
from innate domain-specific knowledge systems, whereas empiricists propose that …
from innate domain-specific knowledge systems, whereas empiricists propose that …
Beyond learnability: understanding human visual development with DNNs
L Yuan - Trends in cognitive sciences, 2024 - cell.com
Abstract Recently, Orhan and Lake demonstrated the computational plausibility that children
can acquire sophisticated visual representations from natural input data without inherent …
can acquire sophisticated visual representations from natural input data without inherent …
Is Child-Directed Speech Effective Training Data for Language Models?
While high-performing language models are typically trained on hundreds of billions of
words, human children become fluent language users with a much smaller amount of data …
words, human children become fluent language users with a much smaller amount of data …
Parallel development of social behavior in biological and artificial fish
Our algorithmic understanding of vision has been revolutionized by a reverse engineering
paradigm that involves building artificial systems that perform the same tasks as biological …
paradigm that involves building artificial systems that perform the same tasks as biological …
From Prototypes to General Distributions: An Efficient Curriculum for Masked Image Modeling
Masked Image Modeling (MIM) has emerged as a powerful self-supervised learning
paradigm for visual representation learning, enabling models to acquire rich visual …
paradigm for visual representation learning, enabling models to acquire rich visual …
Human Gaze Boosts Object-Centered Representation Learning
Recent self-supervised learning (SSL) models trained on human-like egocentric visual
inputs substantially underperform on image recognition tasks compared to humans. These …
inputs substantially underperform on image recognition tasks compared to humans. These …
The BabyView dataset: High-resolution egocentric videos of infants' and young children's everyday experiences
Human children far exceed modern machine learning algorithms in their sample efficiency,
achieving high performance in key domains with much less data than current models …
achieving high performance in key domains with much less data than current models …
Discovering Hidden Visual Concepts Beyond Linguistic Input in Infant Learning
Infants develop complex visual understanding rapidly, even preceding of the acquisition of
linguistic inputs. As computer vision seeks to replicate the human vision system …
linguistic inputs. As computer vision seeks to replicate the human vision system …
Active Gaze Behavior Boosts Self-Supervised Object Learning
Due to significant variations in the projection of the same object from different viewpoints,
machine learning algorithms struggle to recognize the same object across various …
machine learning algorithms struggle to recognize the same object across various …
Learning Object Semantic Similarity with Self-Supervision
Humans judge the similarity of two objects not just based on their visual appearance but
also based on their semantic relatedness. However, it remains unclear how humans learn …
also based on their semantic relatedness. However, it remains unclear how humans learn …