Computer vision researchers spent a lot of time creating large datasets, yet there is still much information that is difficult to label. Detailed annotations like part segmentation and dense keypoint are expensive to annotate. 3D information requires extra hardware to capture. Besides the labeling cost, an image dataset also lacks the ability to allow an intelligent agent to interact with the world. As a human, we learn through interaction, rather than per-pixel labeled images. To fill in the gap of existing datasets, we propose to build virtual worlds using computer graphics and use generated synthetic data to solve these challenges. In this dissertation, I demonstrate cases where computer vision challenges can be solved with synthetic da...
The advent of data mining and machine learning has highlighted the value of large and varied sources...
The semantic segmentation of a scene is one of the basic components towards the total understanding ...
Pixel-wise image segmentation is key for many Computer Vision applications. The training of deep neu...
In recent years, learning-based methods have become the dominant approach to solving computer vision...
Deep learning allows computers to learn from observations, or else training data. Successful applica...
Hierarchical neural networks with large numbers of layers are the state of the art for most computer...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper presents a novel approach to training a real-world object detection system based on synth...
Realistic synthetic image data rendered from 3D models can be used to augment image sets and train i...
Recent breakthroughs in synthetic data generation approaches made it possible to produce highly phot...
Data-driven algorithms have surpassed traditional techniques in almost every aspect in robotic visio...
Large and balanced datasets are normally crucial for many machine learning models, especially when t...
Today, the cutting edge of computer vision research greatly depends on the availability of large dat...
Today, the cutting edge of computer vision research greatly depends on the availability of large dat...
Large-scale synthetic data is needed to support the deep learning big-bang that started in the recen...
The advent of data mining and machine learning has highlighted the value of large and varied sources...
The semantic segmentation of a scene is one of the basic components towards the total understanding ...
Pixel-wise image segmentation is key for many Computer Vision applications. The training of deep neu...
In recent years, learning-based methods have become the dominant approach to solving computer vision...
Deep learning allows computers to learn from observations, or else training data. Successful applica...
Hierarchical neural networks with large numbers of layers are the state of the art for most computer...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This paper presents a novel approach to training a real-world object detection system based on synth...
Realistic synthetic image data rendered from 3D models can be used to augment image sets and train i...
Recent breakthroughs in synthetic data generation approaches made it possible to produce highly phot...
Data-driven algorithms have surpassed traditional techniques in almost every aspect in robotic visio...
Large and balanced datasets are normally crucial for many machine learning models, especially when t...
Today, the cutting edge of computer vision research greatly depends on the availability of large dat...
Today, the cutting edge of computer vision research greatly depends on the availability of large dat...
Large-scale synthetic data is needed to support the deep learning big-bang that started in the recen...
The advent of data mining and machine learning has highlighted the value of large and varied sources...
The semantic segmentation of a scene is one of the basic components towards the total understanding ...
Pixel-wise image segmentation is key for many Computer Vision applications. The training of deep neu...