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Guide to Convolutional Neural Networks
Details
This must-read text/reference introduces the fundamental concepts of convolutional neural networks (ConvNets), offering practical guidance on using libraries to implement ConvNets in applications of traffic sign detection and classification. The work presents techniques for optimizing the computational efficiency of ConvNets, as well as visualization techniques to better understand the underlying processes. The proposed models are also thoroughly evaluated from different perspectives, using exploratory and quantitative analysis. Topics and features: explains the fundamental concepts behind training linear classifiers and feature learning; discusses the wide range of loss functions for training binary and multi-class classifiers; illustrates how to derive ConvNets from fully connected neural networks, and reviews different techniques for evaluating neural networks; presents a practical library for implementing ConvNets, explaining how to use a Python interface for the library to create and assess neural networks; describes two real-world examples of the detection and classification of traffic signs using deep learning methods; examines a range of varied techniques for visualizing neural networks, using a Python interface; provides self-study exercises at the end of each chapter, in addition to a helpful glossary, with relevant Python scripts supplied at an associated website. This self-contained guide will benefit those who seek to both understand the theory behind deep learning, and to gain hands-on experience in implementing ConvNets in practice. As no prior background knowledge in the field is required to follow the material, the book is ideal for all students of computer vision and machine learning, and will also be of great interest to practitioners working on autonomous cars and advanced driver assistance systems.
Describes how to practically solve problems of traffic sign detection and classification using deep learning methods Explains how the methods can be easily implemented, without requiring prior background knowledge in the field of deep learning Discusses the theory behind deep learning and the relevant mathematical models, as well as illustrating how to implement a ConvNet in practice? Includes supplementary material: sn.pub/extras Includes supplementary material: sn.pub/extras
Inhalt
Traffic Sign Detection and Recognition.- Pattern Classification.- Convolutional Neural Networks.- Caffe Library.- Classification of Traffic Signs.- Detecting Traffic Signs.- Visualizing Neural Networks.- Appendix A: Gradient Descend.<p
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783319861906
- Auflage Softcover reprint of the original 1st edition 2017
- Sprache Englisch
- Genre Anwendungs-Software
- Größe H235mm x B155mm x T16mm
- Jahr 2018
- EAN 9783319861906
- Format Kartonierter Einband
- ISBN 3319861905
- Veröffentlichung 02.08.2018
- Titel Guide to Convolutional Neural Networks
- Autor Elnaz Jahani Heravi , Hamed Habibi Aghdam
- Untertitel A Practical Application to Traffic-Sign Detection and Classification
- Gewicht 526g
- Herausgeber Springer International Publishing
- Anzahl Seiten 308
- Lesemotiv Verstehen