Image recognition programs require large sets of training data to produce accurate results. Human workers may categorize training sets that programs may use as training data to learn how to recognize objects. To increase the efficiency of the workers, it is proposed to break the categorization down into multiple steps in a pipeline. Different groups of workers will provide input at different stages of the pipeline, and the input from one group of workers will be passed to another group of workers. Breaking the categorization down into smaller tasks may increase the efficiency of the workers
Conventional approaches to training a supervised image classification aim to fully describe all of t...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
Vision extracts useful information from images. Reconstructing the three-dimensional structure of ou...
No matter how sophisticated one\u27s statistical classifier might be, the success of a spectral patt...
Techniques are provided herein for generating a face data set which contains badge identifier photos...
Image recognition, also known as computer vision, is one of the most prominent applications of neura...
Image recognition, also known as computer vision, is one of the most prominent applications of neura...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
Training sets for object recognition are of fundamental importance for image classifiers. However, th...
Artificial intelligence and machine learning is used in a lot of different areas, one of those areas...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
Developments in machine learning in recent years have created opportunities that previously never ex...
Creating a vision pipeline for different datasets to solve a computer vision task is a complex and t...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
In recent years, novel deep learning techniques, greater data availability, and a significant growth...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
Vision extracts useful information from images. Reconstructing the three-dimensional structure of ou...
No matter how sophisticated one\u27s statistical classifier might be, the success of a spectral patt...
Techniques are provided herein for generating a face data set which contains badge identifier photos...
Image recognition, also known as computer vision, is one of the most prominent applications of neura...
Image recognition, also known as computer vision, is one of the most prominent applications of neura...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
Training sets for object recognition are of fundamental importance for image classifiers. However, th...
Artificial intelligence and machine learning is used in a lot of different areas, one of those areas...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
Developments in machine learning in recent years have created opportunities that previously never ex...
Creating a vision pipeline for different datasets to solve a computer vision task is a complex and t...
The Training Data Selector (TDS) allows a user to select training data that can then be used to trai...
In recent years, novel deep learning techniques, greater data availability, and a significant growth...
Conventional approaches to training a supervised image classification aim to fully describe all of t...
Machine Learning is one of the most debated topic in computer world these days, especially after the...
Vision extracts useful information from images. Reconstructing the three-dimensional structure of ou...