Local features are important building blocks for many computer vision algorithms such as visual object alignment, object recognition, and content-based image retrieval. Local features are extracted from an image by a local feature detector and then the detected features are encoded using a local feature descriptor. The resulting features based on the descriptors, such as histograms or binary strings, are used in matching to find similar features between objects in images. In this thesis, we deal with two research problem in the context of local features for object detection: we extend the original local feature detector and descriptor performance benchmarks from the wide baseline setting to the intra-class matching; and propose local featur...
The problem of object recognition is of immense practical importance and potential, and the last dec...
At the core of many computer vision algorithms lies the task of finding a correspondence between ima...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Local features are important building blocks for many computer vision algorithms such as visual obje...
Local features are important building blocks for many computer vision algorithms such as visual obje...
Object detection is to find and localize objects of a specific class in images or videos. This task ...
Abstract—Local feature detection and description are widely used for object recognition such as augm...
Detection and recognition of objects in images is one of the most impor- tant problems in computer v...
Local features are widely utilized in a large number of applications, e.g., object categorization, i...
Abstract — As the popularity of digital videos increases, a large number illegal videos are being ge...
The last few years have seen the emergence of sophisticated computer vision systems that target comp...
In this paper we compare the performance of local de-tectors and descriptors in the context of objec...
Video segmentation into shots is the first step for video indexing and searching. Videos shots are m...
Local feature detectors and descriptors (hereinafter extractors) play a key role in the modern compu...
Local feature detectors and descriptors (hereinafter extractors) play a key role in the modern compu...
The problem of object recognition is of immense practical importance and potential, and the last dec...
At the core of many computer vision algorithms lies the task of finding a correspondence between ima...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...
Local features are important building blocks for many computer vision algorithms such as visual obje...
Local features are important building blocks for many computer vision algorithms such as visual obje...
Object detection is to find and localize objects of a specific class in images or videos. This task ...
Abstract—Local feature detection and description are widely used for object recognition such as augm...
Detection and recognition of objects in images is one of the most impor- tant problems in computer v...
Local features are widely utilized in a large number of applications, e.g., object categorization, i...
Abstract — As the popularity of digital videos increases, a large number illegal videos are being ge...
The last few years have seen the emergence of sophisticated computer vision systems that target comp...
In this paper we compare the performance of local de-tectors and descriptors in the context of objec...
Video segmentation into shots is the first step for video indexing and searching. Videos shots are m...
Local feature detectors and descriptors (hereinafter extractors) play a key role in the modern compu...
Local feature detectors and descriptors (hereinafter extractors) play a key role in the modern compu...
The problem of object recognition is of immense practical importance and potential, and the last dec...
At the core of many computer vision algorithms lies the task of finding a correspondence between ima...
This thesis presents a framework for automatic recognition of human actions in uncontrolled, realist...