Detecting and tracking people is a challenging task in a persistent crowded environment (i.e. retail, airport, station, etc.) for human behaviour analysis of security purposes. This paper introduces an approach to track and detect people in cases of heavy occlusions based on CNNs for semantic segmentation using top-view depth visual data. The purpose is the design of a novel U-Net architecture, U-Net3, that has been modified compared to the previous ones at the end of each layer. In particular, a batch normalization is added after the first ReLU activation function and after each max-pooling and up-sampling functions. The approach was applied and tested on a new and public available dataset, TVHeads Dataset, consisting of depth images of pe...
Nowadays, detecting people and understanding their behaviour automatically is one of the key aspects...
This paper describes a novel DNN-based system, named PD3net, that detects multiple people from a sin...
The thesis addresses the following challenging problems of detecting and tracking humans in the pres...
Detecting and tracking people is a challenging task in a persistent crowded environment (i.e. retail...
The paper “Convolutional Networks for semantic Heads Segmentation using Top-View Depth Data in Crowd...
The detection of people in crowded scenes is a challenging task owing to both the severe occlusion a...
People counting is a crucial subject in video surveillance application. Factors such as severe occlu...
The population of the world has been increasing and crowded scenes are more likely to occur, especia...
During the last decades, people detection has received great attention in computer vision and patter...
There has been an increasing interest on the analysis of First Person Videos in the last few years d...
There has been an increasing interest on the analysis of First Person Videos in the last few years d...
In the field of computer vision, object detection consists of automatically finding objects in image...
With the development of society, people are going out more and more, which leads to more and more cr...
We propose a deep-learning approach for people detection on depth imagery. The approach is designed ...
In this paper we describe a system for automatic people counting in crowded environments. The approa...
Nowadays, detecting people and understanding their behaviour automatically is one of the key aspects...
This paper describes a novel DNN-based system, named PD3net, that detects multiple people from a sin...
The thesis addresses the following challenging problems of detecting and tracking humans in the pres...
Detecting and tracking people is a challenging task in a persistent crowded environment (i.e. retail...
The paper “Convolutional Networks for semantic Heads Segmentation using Top-View Depth Data in Crowd...
The detection of people in crowded scenes is a challenging task owing to both the severe occlusion a...
People counting is a crucial subject in video surveillance application. Factors such as severe occlu...
The population of the world has been increasing and crowded scenes are more likely to occur, especia...
During the last decades, people detection has received great attention in computer vision and patter...
There has been an increasing interest on the analysis of First Person Videos in the last few years d...
There has been an increasing interest on the analysis of First Person Videos in the last few years d...
In the field of computer vision, object detection consists of automatically finding objects in image...
With the development of society, people are going out more and more, which leads to more and more cr...
We propose a deep-learning approach for people detection on depth imagery. The approach is designed ...
In this paper we describe a system for automatic people counting in crowded environments. The approa...
Nowadays, detecting people and understanding their behaviour automatically is one of the key aspects...
This paper describes a novel DNN-based system, named PD3net, that detects multiple people from a sin...
The thesis addresses the following challenging problems of detecting and tracking humans in the pres...