Title
CNN Implementation for Semantic Heads Segmentation Using Top-View Depth Data in Crowded Environment.
Abstract
The paper “Convolutional Networks for semantic Heads Segmentation using Top-View Depth Data in Crowded Environment” [1] introduces an approach to track and detect people in cases of heavy occlusions based on CNNs for semantic segmentation using top-view RGB-D visual data. The purpose is the design of a novel U-Net architecture, U-Net 3, that has been modified compared to the previous ones at the end of each layer. In order to evaluate this new architecture a comparison has been made with other networks in the literature used for semantic segmentation. The implementation is in Python code using Keras API with Tensorflow library. The input data consist of depth frames, from Asus Xtion Pro Live OpenNI recordings (.oni). The dataset used for training and testing of the networks has been manually labeled and it is freely available as well as the source code. The aforementioned networks have their stand-alone Python script implementation for training and testing. A Python script for the on-line prediction in OpenNI recordings (.oni) is also provided. Evaluation of the networks has been made with different metrics implementations (precision, recall, F1 Score, Sorensen-Dice coefficient), included in the networks scripts.
Year
DOI
Venue
2018
10.1007/978-3-030-23987-9_6
RRPR
Field
DocType
Citations 
F1 score,Computer vision,Architecture,Source code,Segmentation,Computer science,Implementation,Artificial intelligence,RGB color model,Python (programming language),Scripting language
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Rocco Pietrini113.74
Daniele Liciotti2245.25
Marina Paolanti31012.39
Emanuele Frontoni424847.04
Primo Zingaretti528944.00