We address various issues in learning and representation of visual object categories. A key component of many state of the art object detection and image recognition systems, is the image classifier. We first show that a large number of classifiers used in computer vision that are based on comparison of histograms of low level features, are "additive", and propose algorithms that enable training and evaluation of additive classifiers that offer better tradeoffs between accuracy, runtime memory and time complexity than previous algorithms. Our analysis speeds up the training and evaluation of several state of the art object detection, and image classification methods by several orders of magnitude.Many successful object detection algorithms ...
Detecting and describing objects is one of the fundamental challenges in computer vision. Teaching c...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
Recognition is a deep and fundamental question in computer vision. If approached correctly, object r...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
The performance of computer vision recognition methods heavily relies on the chosen image or video r...
This thesis presents novel techniques for image recognition systems for better understanding image c...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
The objective of this work is to make a step towards an artificial system with human-like visual int...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
Object recognition in digital images is crucial for further automation in everyday life and industry...
Classification, a \textit{supervised learning} problem, is a technique to categorize a given set of ...
Robust low-level image features have been proven to be effective representations for a variety of vi...
Detecting and describing objects is one of the fundamental challenges in computer vision. Teaching c...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
Recognition is a deep and fundamental question in computer vision. If approached correctly, object r...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
The performance of computer vision recognition methods heavily relies on the chosen image or video r...
This thesis presents novel techniques for image recognition systems for better understanding image c...
This thesis aims at learning and predicting the fine-grained structure of visual object categories g...
The objective of this work is to make a step towards an artificial system with human-like visual int...
textVisual recognition research develops algorithms and representations to autonomously recognize vi...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
The solution to a supervised computer vision problem consists of an application, algorithm, input da...
Object recognition in digital images is crucial for further automation in everyday life and industry...
Classification, a \textit{supervised learning} problem, is a technique to categorize a given set of ...
Robust low-level image features have been proven to be effective representations for a variety of vi...
Detecting and describing objects is one of the fundamental challenges in computer vision. Teaching c...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
Recognition is a deep and fundamental question in computer vision. If approached correctly, object r...