Understanding how humans and machines recognize novel visual concepts from few examples remains a fundamental challenge. Humans are remarkably able to grasp a new concept and make meaningful generalization from just few examples. By contrast, state-ofthe- art machine learning techniques and visual recognition systems typically require thousands of training examples and often break down if the training sample set is too small. This dissertation aims to endow visual recognition systems with low-shot learning ability, so that they learn consistently well on data of different sample sizes. Our key insight is that the visual world is well structured and highly predictable not only in data and feature spaces but also in task and model spaces. Suc...
In recent years, there has been rapid progress in computing performance and communication techniques...
Most CNN models rely on the large-scale annotated training data, and the performance turns to be lo...
The success of deep neural networks in a variety of computer vision tasks heavily relies on large- s...
<p>Understanding how humans and machines recognize novel visual concepts from few examples remains a...
Despite huge progress in artificial intelligence, the ability to quickly learn from few examples is ...
Few-shot learning aims to scale visual recognition to open-ended growth of new classes with limited ...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
The ability to learn quickly from a few samples is a vital element of intelligence. Humans can reuse...
Despite recent success of deep neural networks, it remains challenging to efficiently learn new visu...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
One of the fundamental problems in machine learning is training high-quality neural network models u...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Few-shot visual recognition refers to recognize novel visual concepts from a few labeled instances. ...
In recent years, there has been rapid progress in computing performance and communication techniques...
Most CNN models rely on the large-scale annotated training data, and the performance turns to be lo...
The success of deep neural networks in a variety of computer vision tasks heavily relies on large- s...
<p>Understanding how humans and machines recognize novel visual concepts from few examples remains a...
Despite huge progress in artificial intelligence, the ability to quickly learn from few examples is ...
Few-shot learning aims to scale visual recognition to open-ended growth of new classes with limited ...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
The ability to learn quickly from a few samples is a vital element of intelligence. Humans can reuse...
Despite recent success of deep neural networks, it remains challenging to efficiently learn new visu...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
One of the fundamental problems in machine learning is training high-quality neural network models u...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Recent advances in computer vision are in part due to the widespread use of deep neural networks. Ho...
Few-shot visual recognition refers to recognize novel visual concepts from a few labeled instances. ...
In recent years, there has been rapid progress in computing performance and communication techniques...
Most CNN models rely on the large-scale annotated training data, and the performance turns to be lo...
The success of deep neural networks in a variety of computer vision tasks heavily relies on large- s...