Deep learning systems can perform well on some image recognition tasks. However, they have serious limitations, including requiring far more training data than humans do and being fooled by adversarial examples. By contrast, analogical learning over relational representations tends to be far more data-efficient, requiring only human-like amounts of training data. This paper introduces an approach that combines automatically constructed qualitative visual representations with analogical learning to tackle a hard computer vision problem, object recognition from sketches. Results from the MNIST dataset and a novel dataset, the Coloring Book Objects dataset, are provided. Comparison to existing approaches indicates that analogical generalizatio...
The Problem: We use sketches as a medium for expressing ideas and saving thoughts. Sketching is espe...
As the popularity of touch-screen devices, understanding a user's hand-drawn sketch has become an in...
Human action recognition remains a difficult problem for AI. Traditional machine learning techniques...
This paper explores the use of analogy to learn about properties of sketches. Sketches often convey ...
Human free-hand sketches have been studied in various contexts including sketch recognition, synthes...
Although the sketch recognition and computer vision communities attempt to solve similar problems in...
Sketch recognition aims to automatically classify human hand sketches of objects into known categori...
Contemporary deep learning techniques have made image recognition a reasonably reliable technology. ...
Sketching has been used by humans to visualize and narrate the aesthetics of the world for a long ti...
One of the major challenges to building intelligent educational software is determining what kinds o...
One of the major challenges to building intelligent educational software is determining what kinds o...
Humans effortlessly grasp the connection between sketches and real-world objects, even when these sk...
Sketching is a natural mode of communication that can be used to support communication among humans....
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
Mining learner-generated sketches holds significant potential for acquiring deep insight into learne...
The Problem: We use sketches as a medium for expressing ideas and saving thoughts. Sketching is espe...
As the popularity of touch-screen devices, understanding a user's hand-drawn sketch has become an in...
Human action recognition remains a difficult problem for AI. Traditional machine learning techniques...
This paper explores the use of analogy to learn about properties of sketches. Sketches often convey ...
Human free-hand sketches have been studied in various contexts including sketch recognition, synthes...
Although the sketch recognition and computer vision communities attempt to solve similar problems in...
Sketch recognition aims to automatically classify human hand sketches of objects into known categori...
Contemporary deep learning techniques have made image recognition a reasonably reliable technology. ...
Sketching has been used by humans to visualize and narrate the aesthetics of the world for a long ti...
One of the major challenges to building intelligent educational software is determining what kinds o...
One of the major challenges to building intelligent educational software is determining what kinds o...
Humans effortlessly grasp the connection between sketches and real-world objects, even when these sk...
Sketching is a natural mode of communication that can be used to support communication among humans....
We propose a deep learning approach to free-hand sketch recognition that achieves state-of-the-art p...
Mining learner-generated sketches holds significant potential for acquiring deep insight into learne...
The Problem: We use sketches as a medium for expressing ideas and saving thoughts. Sketching is espe...
As the popularity of touch-screen devices, understanding a user's hand-drawn sketch has become an in...
Human action recognition remains a difficult problem for AI. Traditional machine learning techniques...