Abstract—Generic object detection is confronted by dealing with different degrees of variations, caused by viewpoints or defor-mations in distinct object classes, with tractable computations. This demands for descriptive and flexible object representations which can be efficiently evaluated in many locations. We propose to model an object class with a cascaded boosting classifier which integrates various types of features from competing local regions, each of which may consist of a group of subregions, named as regionlets. A regionlet is a base feature extraction region defined proportionally to a detection window at an arbitrary resolution (i.e., size and aspect ratio). These regionlets are organized in small groups with stable relative po...
In this paper we present a novel framework for generic object class detection by integrating Kernel ...
In this paper we present a general framework for object detection and segmentation. Using a bottom-u...
Abstract. Standard sliding window based object detection requires dense classifier evaluation on den...
Generic object detection is confronted by dealing with different degrees of variations in distinct o...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
textIn this thesis, I explore region detection and consider its impact on image matching for exempla...
Object detection and multi-class image segmentation are two closely related tasks that can be greatl...
We introduce a method for object class detection and localization which combines regions generated b...
In this work we address the problem of object recognition and localization within cluttered, natura...
International audienceWe introduce a method for object class detection and localization which combin...
We introduce a method for object class detection and localization which combines regions generated b...
We propose a new class-specific image representation for image classification using multiple region ...
In this paper, we introduce a scale-invariant feature selection method that learns to recognize and ...
Region-based object detection infers object regions for one or more categories in an image. Due to t...
Abstract—Object detection performance, as measured on the canonical PASCAL VOC Challenge datasets, p...
In this paper we present a novel framework for generic object class detection by integrating Kernel ...
In this paper we present a general framework for object detection and segmentation. Using a bottom-u...
Abstract. Standard sliding window based object detection requires dense classifier evaluation on den...
Generic object detection is confronted by dealing with different degrees of variations in distinct o...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
textIn this thesis, I explore region detection and consider its impact on image matching for exempla...
Object detection and multi-class image segmentation are two closely related tasks that can be greatl...
We introduce a method for object class detection and localization which combines regions generated b...
In this work we address the problem of object recognition and localization within cluttered, natura...
International audienceWe introduce a method for object class detection and localization which combin...
We introduce a method for object class detection and localization which combines regions generated b...
We propose a new class-specific image representation for image classification using multiple region ...
In this paper, we introduce a scale-invariant feature selection method that learns to recognize and ...
Region-based object detection infers object regions for one or more categories in an image. Due to t...
Abstract—Object detection performance, as measured on the canonical PASCAL VOC Challenge datasets, p...
In this paper we present a novel framework for generic object class detection by integrating Kernel ...
In this paper we present a general framework for object detection and segmentation. Using a bottom-u...
Abstract. Standard sliding window based object detection requires dense classifier evaluation on den...