In many 3–D object-detection and pose-estimation problems, run-time performance is of critical importance. However, there usually is time to train the system, which we will show to be very useful. Assuming that several registered images of the target object are available, we developed a keypoint-based approach that is effective in this context by formulating wide-baseline matching of keypoints extracted from the input images to those found in the model images as a classification problem. This shifts much of the computational burden to a training phase, without sacrificing recognition performance. As a result, the resulting algorithm is robust, accurate, and fast-enough for frame-rate performance. This reduction in run-time computational com...
Abstract—In this work, we propose a method for object detection with pose estimation based on matchi...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
In 3D object recognition, local feature-based recognition is known to be robust against occlusion an...
In many 3–D object-detection and pose-estimation problems, run-time performance is of critical impor...
Abstract In many 3-D object-detection and pose-estimation problems, run-time performance is of criti...
In earlier work, we proposed treating wide baseline matching of feature points as a classification p...
We propose a novel approach to point matching under large viewpoint and illumination changes that ar...
While feature point recognition is a key component of modern approaches to object detection, existin...
While feature point recognition is a key component of modern approaches to object detection, existin...
Keypoints that do not meet the needs of a given application are a very common accuracy and efficienc...
This paper presents a unified approach to object recog-nition and object tracking, combining local f...
We propose a new framework for object detection based on a generalization of the keypoint correspon-...
This paper presents a method of planar object recognition for aiming at accessing information about ...
. Pose clustering is a method to perform object recognition by determining hypothetical object poses...
During the course of this thesis, two scenarios are considered. In the first one, we contribute to f...
Abstract—In this work, we propose a method for object detection with pose estimation based on matchi...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
In 3D object recognition, local feature-based recognition is known to be robust against occlusion an...
In many 3–D object-detection and pose-estimation problems, run-time performance is of critical impor...
Abstract In many 3-D object-detection and pose-estimation problems, run-time performance is of criti...
In earlier work, we proposed treating wide baseline matching of feature points as a classification p...
We propose a novel approach to point matching under large viewpoint and illumination changes that ar...
While feature point recognition is a key component of modern approaches to object detection, existin...
While feature point recognition is a key component of modern approaches to object detection, existin...
Keypoints that do not meet the needs of a given application are a very common accuracy and efficienc...
This paper presents a unified approach to object recog-nition and object tracking, combining local f...
We propose a new framework for object detection based on a generalization of the keypoint correspon-...
This paper presents a method of planar object recognition for aiming at accessing information about ...
. Pose clustering is a method to perform object recognition by determining hypothetical object poses...
During the course of this thesis, two scenarios are considered. In the first one, we contribute to f...
Abstract—In this work, we propose a method for object detection with pose estimation based on matchi...
none5noThe established approach to 3D keypoint detection consists in defining effective handcrafted ...
In 3D object recognition, local feature-based recognition is known to be robust against occlusion an...