Recent years have seen the rapid growth of new approaches to optical imaging, with an emphasis on extracting three-dimensional (3D) information from what is normally a two-dimensional (2D) image capture. Perhaps most importantly, the rise of computational imaging enables both new physical layouts of optical components and new algorithms to be implemented. This paper concerns the convergence of two advances: the development of a transparent focal stack imaging system using graphene photodetector arrays, and the rapid expansion of the capabilities of machine learning including the development of powerful neural networks. This paper demonstrates 3D tracking of point-like objects with multilayer feedforward neural networks and the extension to ...
Deep learning algorithms are able to automatically handle point clouds over a broad range of 3D imag...
Self-organising neural networks have shown promise in a variety of applications areas. Their massive...
Optical microscopy offers a noninvasive way to image neural activity in the mouse brain. To simultan...
Code in python for paper Neural Network Based 3D Tracking with a Graphene Transparent Focal Stack Im...
The problem of processing point cloud sequences is considered in this work. In particular, a system ...
Great progress has been achieved in computer vision tasks within image and video; however, technolog...
This work introduces a neural network for estimating the detailed 3D structure of the foreground hum...
Online 3D multi-object tracking (MOT) has witnessed significant research interest in recent years, l...
We can infer the 3D structure of our surroundings simply by looking. It is long hoped that imaging d...
This work proposes a deep neural net (DNN) that accomplishes the reliable visual recognition of a ch...
The thesis is about Neural Networks as applied to Vision Systems in recognizing three dimensional ob...
International audienceIn recent years, there has been significant progress in robot manipulation res...
Artificial neural networks have been combined with microscopy to visualize the 3D structure of biolo...
Self-organising neural networks have shown promise in a variety of applications areas. Their massive...
Essig K, Pomplun M, Ritter H. A neural network for 3D gaze recording with binocular eye trackers. In...
Deep learning algorithms are able to automatically handle point clouds over a broad range of 3D imag...
Self-organising neural networks have shown promise in a variety of applications areas. Their massive...
Optical microscopy offers a noninvasive way to image neural activity in the mouse brain. To simultan...
Code in python for paper Neural Network Based 3D Tracking with a Graphene Transparent Focal Stack Im...
The problem of processing point cloud sequences is considered in this work. In particular, a system ...
Great progress has been achieved in computer vision tasks within image and video; however, technolog...
This work introduces a neural network for estimating the detailed 3D structure of the foreground hum...
Online 3D multi-object tracking (MOT) has witnessed significant research interest in recent years, l...
We can infer the 3D structure of our surroundings simply by looking. It is long hoped that imaging d...
This work proposes a deep neural net (DNN) that accomplishes the reliable visual recognition of a ch...
The thesis is about Neural Networks as applied to Vision Systems in recognizing three dimensional ob...
International audienceIn recent years, there has been significant progress in robot manipulation res...
Artificial neural networks have been combined with microscopy to visualize the 3D structure of biolo...
Self-organising neural networks have shown promise in a variety of applications areas. Their massive...
Essig K, Pomplun M, Ritter H. A neural network for 3D gaze recording with binocular eye trackers. In...
Deep learning algorithms are able to automatically handle point clouds over a broad range of 3D imag...
Self-organising neural networks have shown promise in a variety of applications areas. Their massive...
Optical microscopy offers a noninvasive way to image neural activity in the mouse brain. To simultan...