In this article, scale and orientation invariant object detection is performed by matching intensity level histograms. Unlike other global measurement methods, the present one uses a local feature description that allows small changes in the histogram signature, giving robustness to partial occlusions. Local features over the object histogram are extracted during a Boosting learning phase, selecting the most discriminant features within a training histogram image set. The Integral Histogram has been used to compute local histograms in constant time.Peer ReviewedPostprint (author's final draft
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Today, automatic object detection in image data is usually performed using machine-learning approach...
In this article, scale and orientation invariant object detection is performed by matching intensity...
Detection and recognition of objects in images is one of the most impor- tant problems in computer v...
Object detection and localization is a crucial step for inspection and manipulation tasks in robotic...
Abstract. We present a framework for object recognition based on simple scale and orientation invari...
Object detection and tracking in imagery captured by aerial systems are becoming increasingly import...
Abstract. We investigate the suitability of different local feature detectors for the task of automa...
Research in automated object detection has mainly addressed detection in 2-D intensity images. The b...
We present a new approach for building an efficient and robust classifier for the two class problem,...
In this paper, we propose an object detection method that uses Joint features combined from multiple...
In this thesis we present an approach to appearance-based object recognition using single camera ima...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
A reliable appearance template has to extract a set of invariant features that holds the blueprint o...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Today, automatic object detection in image data is usually performed using machine-learning approach...
In this article, scale and orientation invariant object detection is performed by matching intensity...
Detection and recognition of objects in images is one of the most impor- tant problems in computer v...
Object detection and localization is a crucial step for inspection and manipulation tasks in robotic...
Abstract. We present a framework for object recognition based on simple scale and orientation invari...
Object detection and tracking in imagery captured by aerial systems are becoming increasingly import...
Abstract. We investigate the suitability of different local feature detectors for the task of automa...
Research in automated object detection has mainly addressed detection in 2-D intensity images. The b...
We present a new approach for building an efficient and robust classifier for the two class problem,...
In this paper, we propose an object detection method that uses Joint features combined from multiple...
In this thesis we present an approach to appearance-based object recognition using single camera ima...
Local descriptors are increasingly used for the task of object recognition because of their perceive...
A reliable appearance template has to extract a set of invariant features that holds the blueprint o...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Local invariant features have shown to be very successful for recognition. They are robust to occlus...
Today, automatic object detection in image data is usually performed using machine-learning approach...