2015 Summer.Visual classification is a core component in many visually intelligent systems. For example, recognition of objects and terrains provides perception during path planning and navigation tasks performed by autonomous agents. Supervised visual classifiers are typically trained with large sets of images to yield high classification performance. Although the collection of raw training data is easy, the required human effort to assign labels to this data is time consuming. This is particularly problematic in real-world applications with limited labeling time and resources. Techniques have emerged that are designed to help alleviate the labeling workload but suffer from several shortcomings. First, they do not generalize well to domai...
We present the first active learning tool for fine-grained 3D part labeling, a problem which challen...
There is a severe demand for, and shortage of, large accurately labeled datasets to train supervised...
Environment maps are essential for robots and intelligent gadgets to autonomously carry out tasks. T...
Visual classifiers are part of many applications includ-ing surveillance, autonomous navigation and ...
Abstract—Semantic labeling of RGB-D scenes is very impor-tant in enabling robots to perform mobile m...
Labeling data to train visual concept classifiers requires significant human effort. Active learning...
Research in the field of supervised classification has mostly focused on the standard, so-called “fl...
As more and more data with class taxonomies emerge in diverse fields, such as pattern recognition, t...
The goal of this work is to propose a framework for learning attributes of real-world objects via a ...
In this thesis, two hierarchical learning representations are explored in computer vision tasks. Fir...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Teaching a computer to do what humans can do is the ultimate goal of artificial intelligence. In the...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
textThis research focused on the development of a hierarchical approach for classification that is ...
This electronic version was submitted by the student author. The certified thesis is available in th...
We present the first active learning tool for fine-grained 3D part labeling, a problem which challen...
There is a severe demand for, and shortage of, large accurately labeled datasets to train supervised...
Environment maps are essential for robots and intelligent gadgets to autonomously carry out tasks. T...
Visual classifiers are part of many applications includ-ing surveillance, autonomous navigation and ...
Abstract—Semantic labeling of RGB-D scenes is very impor-tant in enabling robots to perform mobile m...
Labeling data to train visual concept classifiers requires significant human effort. Active learning...
Research in the field of supervised classification has mostly focused on the standard, so-called “fl...
As more and more data with class taxonomies emerge in diverse fields, such as pattern recognition, t...
The goal of this work is to propose a framework for learning attributes of real-world objects via a ...
In this thesis, two hierarchical learning representations are explored in computer vision tasks. Fir...
The power of deep neural networks comes mainly from huge labeled datasets. Even though it shines on ...
Teaching a computer to do what humans can do is the ultimate goal of artificial intelligence. In the...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
textThis research focused on the development of a hierarchical approach for classification that is ...
This electronic version was submitted by the student author. The certified thesis is available in th...
We present the first active learning tool for fine-grained 3D part labeling, a problem which challen...
There is a severe demand for, and shortage of, large accurately labeled datasets to train supervised...
Environment maps are essential for robots and intelligent gadgets to autonomously carry out tasks. T...