The problem of processing point cloud sequences is considered in this work. In particular, a system that represents and tracks objects in dynamic scenes acquired using low-cost sensors such as the Kinect is presented. An efficient neural network-based approach is proposed to represent and estimate the motion of 3D objects. This system addresses multiple computer vision tasks such as object segmentation, representation, motion analysis and tracking. The use of a neural network allows the unsupervised estimation of motion and the representation of objects in the scene. This proposal avoids the problem of finding corresponding features while tracking moving objects. A set of experiments are presented that demonstrate the validity of our method...
This work proposes a deep neural net (DNN) that accomplishes the reliable visual recognition of a ch...
The paper discusses a novel unsupervised learning approach for tracking deformable objects manipulat...
The present Master Thesis describes a new Pose Estimation method based on Convolutional Neural Netwo...
Great progress has been achieved in computer vision tasks within image and video; however, technolog...
Object tracking is a challenging problem in many computer vision applications, which go from robotic...
In this contribution we describe a vision-based system for the 3D detection and tracking of moving p...
In the paper, a method to track an object and acquire the 3D point cloud data of the object is propo...
One of the promising areas of development and implementation of artificial intelligence is the autom...
Real-time object tracking is a problem which involves extraction of critical information from comple...
Recent years have seen the rapid growth of new approaches to optical imaging, with an emphasis on ex...
This paper addresses the problem of tracking the 3D pose of a camera in space, using the images it a...
This work introduces a neural network for estimating the detailed 3D structure of the foreground hum...
The main goal of this thesis is the development of event-based algorithms for visual detection and t...
Fast movement of objects and illumination changes may lead to a negative effect on camera images for...
BIS3-3Object tracking is useful in applications like computer-aided medical diagnosis, video editing...
This work proposes a deep neural net (DNN) that accomplishes the reliable visual recognition of a ch...
The paper discusses a novel unsupervised learning approach for tracking deformable objects manipulat...
The present Master Thesis describes a new Pose Estimation method based on Convolutional Neural Netwo...
Great progress has been achieved in computer vision tasks within image and video; however, technolog...
Object tracking is a challenging problem in many computer vision applications, which go from robotic...
In this contribution we describe a vision-based system for the 3D detection and tracking of moving p...
In the paper, a method to track an object and acquire the 3D point cloud data of the object is propo...
One of the promising areas of development and implementation of artificial intelligence is the autom...
Real-time object tracking is a problem which involves extraction of critical information from comple...
Recent years have seen the rapid growth of new approaches to optical imaging, with an emphasis on ex...
This paper addresses the problem of tracking the 3D pose of a camera in space, using the images it a...
This work introduces a neural network for estimating the detailed 3D structure of the foreground hum...
The main goal of this thesis is the development of event-based algorithms for visual detection and t...
Fast movement of objects and illumination changes may lead to a negative effect on camera images for...
BIS3-3Object tracking is useful in applications like computer-aided medical diagnosis, video editing...
This work proposes a deep neural net (DNN) that accomplishes the reliable visual recognition of a ch...
The paper discusses a novel unsupervised learning approach for tracking deformable objects manipulat...
The present Master Thesis describes a new Pose Estimation method based on Convolutional Neural Netwo...