Human Action Analysis with Randomized Trees
This book will provide a comprehensive overview on human action analysis with randomized trees. It will cover both the supervised random trees and the unsupervised random trees. When there are sufficient amount of labeled data available, supervised random trees provides a fast method for space-time interest point matching. When labeled data is minimal as in the case of example-based action search, unsupervised random trees is used to leverage the unlabelled data. We describe how the randomized trees can be used for action classification, action detection, action search, and action prediction. We will also describe techniques for space-time action localization including branch-and-bound sub-volume search and propagative Hough voting.
1119993843
Human Action Analysis with Randomized Trees
This book will provide a comprehensive overview on human action analysis with randomized trees. It will cover both the supervised random trees and the unsupervised random trees. When there are sufficient amount of labeled data available, supervised random trees provides a fast method for space-time interest point matching. When labeled data is minimal as in the case of example-based action search, unsupervised random trees is used to leverage the unlabelled data. We describe how the randomized trees can be used for action classification, action detection, action search, and action prediction. We will also describe techniques for space-time action localization including branch-and-bound sub-volume search and propagative Hough voting.
54.99 In Stock
Human Action Analysis with Randomized Trees

Human Action Analysis with Randomized Trees

Human Action Analysis with Randomized Trees

Human Action Analysis with Randomized Trees

eBook2015 (2015)

$54.99 

Available on Compatible NOOK devices, the free NOOK App and in My Digital Library.
WANT A NOOK?  Explore Now

Related collections and offers


Overview

This book will provide a comprehensive overview on human action analysis with randomized trees. It will cover both the supervised random trees and the unsupervised random trees. When there are sufficient amount of labeled data available, supervised random trees provides a fast method for space-time interest point matching. When labeled data is minimal as in the case of example-based action search, unsupervised random trees is used to leverage the unlabelled data. We describe how the randomized trees can be used for action classification, action detection, action search, and action prediction. We will also describe techniques for space-time action localization including branch-and-bound sub-volume search and propagative Hough voting.

Product Details

ISBN-13: 9789812871671
Publisher: Springer-Verlag New York, LLC
Publication date: 08/14/2014
Series: SpringerBriefs in Electrical and Computer Engineering
Sold by: Barnes & Noble
Format: eBook
Pages: 83
File size: 3 MB

Table of Contents

Introduction to Human Action Analysis.- Supervised Trees for Human Action Recognition and Detection.- Unsupervised Trees for Human Action Search.- Propagative Hough Voting to Leverage Contextual Information.- Human Action Prediction with Multi-class Balanced Random Forest.- Conclusion.

From the B&N Reads Blog

Customer Reviews