Panoweaver 9 User Manual (To Start the Online Help, Select Help > Help Topics from the Main Menu Or Press F1)

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Panoweaver 9 User Manual (To Start the Online Help, Select Help > Help Topics from the Main Menu Or Press F1) Panoweaver User Manual www.easypano.com Table Of Contents Welcome .................................................................................................... 1 Introduction ............................................................................................... 3 What's New........................................................................................... 3 Edition Comparison ................................................................................ 4 Get Help ............................................................................................... 5 Install Panoweaver 9 ................................................................................... 7 System Requirements .......................................................................... 10 System Requirements ..................................................................... 10 For Windows .................................................................................. 10 For Macintosh ................................................................................ 11 Activate Panoweaver 9 ............................................................................... 13 Activate Panoweaver 9 ......................................................................... 13 Purchase ............................................................................................ 13 Product Activation ................................................................................ 13 Transfer License Key ............................................................................ 15 Basic Knowledge of Panoweaver 9 ............................................................... 17 About Panoweaver Project File............................................................... 17 User Interface ..................................................................................... 17 Menu Bar ...................................................................................... 19 Image Show and Operation Area ...................................................... 22 Panel ............................................................................................ 28 Status Bar ..................................................................................... 30 My First Panorama ............................................................................... 30 Shoot Images ................................................................................ 31 Stitch Panoramic Image .................................................................. 33 Application .................................................................................... 34 Use Panoweaver 9 ..................................................................................... 35 Stitch Panoramic Image ....................................................................... 35 Parameters Setting about Stitching .................................................. 36 Basic Steps before Stitching ............................................................ 42 Stitch ........................................................................................... 44 Edit Panoramic Images ......................................................................... 48 How to Remove Tripod .................................................................... 48 Add Ceiling/Floor............................................................................ 54 Add Google Maps ........................................................................... 55 Add Hotspot to Panorama ..................................................................... 58 Edit Hotspot .................................................................................. 59 Preview Panorama ............................................................................... 62 Little Planet Panorama ......................................................................... 63 Save Panoramic Image ......................................................................... 64 Retouch Image .............................................................................. 66 Print Panoramic Image.................................................................... 67 Make Virtual Tour with Tourweaver .................................................. 68 Publish Panorama ................................................................................ 68 Flash VR ....................................................................................... 72 Standalone SWF............................................................................. 80 Publish HTML5 tour ........................................................................ 80 Quick Time VR ............................................................................... 83 Upload to Website .......................................................................... 83 Project ............................................................................................... 86 Advanced Settings ............................................................................... 87 Get HDR Image ................................................................................... 88 Get HDR Image ............................................................................. 88 Get HDR Image from Camera Raw File .............................................. 91 iii Printed Documentation Get HDR Image from Bracket Exposure ............................................. 92 Batch Processing Panoramas ................................................................. 95 Batch Stitching .............................................................................. 97 FAQ ....................................................................................................... 103 Panorama Photography ............................................................................ 105 Shoot Normal Images ........................................................................ 105 Shoot Fisheye Images ........................................................................ 106 Shoot Fisheye Images .................................................................. 106 Main Photography Equipment ........................................................ 106 Workflow of Shooting Fisheye Images ............................................. 110 Photograph Tips ........................................................................... 120 Glossary................................................................................................. 123 Index ..................................................................................................... 125 iv www.easypano.com Welcome This document explains the installation and operation of Easypano Panoweaver 9. It is intended for both newbies and professionals who engage in online panorama and virtual tour building. Conventions and Definitions Copyright Announcement Feedback Conventions and Definitions We use the following typographical conventions and definitions in this document: Typeface or Icons Purpose Italic Used to emphasize new terms and concepts at the point where they are introduced. Also used to designate the quoted terms or menus of the software. Used to arouse the readers' attention Note towards certain operations or things they should consider. Used to offer some extra techniques Tip on how to use Panoweaver. Top Copyright Announcement This manual, as well as the software described in it, is furnished under license and may be used or copied only in accordance with the terms of such license. The content of this manual is furnished for informational use only, is subject to change without notice. Easypano assumes no responsibility or liability for any errors or inaccuracies that may appear in this documentation. Except as permitted by such license, no part of this publication may be reproduced, stored in a retrieval system, or transmitted, in any form or by any means, electronic, mechanical, recording, or otherwise, without the prior written permission of Easypano. Panoweaver 9 and Easypano are trademarks of Easypano Holdings Inc. Microsoft, Windows, Macintosh and Internet Explorer are registered trademarks of other Corporation. About more on license information please refer to the license agreement included in the applications. Other products mentioned in this manual have rights and marks held by their respective owners. Top Feedback www.easypano.com 1 We welcome your comments and feedback on this manual. Please send your comments to us by email: [email protected] or visit the Help Desk or select Help > Bug Report/Feature Request to submit. Top 2 www.easypano.com Introduction Introduction Panoweaver can stitch normal or fisheye images into 360° giga pixel panoramic images. Compared with traditional plane image, panoramic image provides 360° field of view to make viewer feel like in the scene physically. As a result, it is widely used in exhibition business, for instance, real estate, tourist scene, automobile, hotel, campus, culture site and gymnasium. In addition, panoramic image can also be used as a record tool in emergency plan, real estate management, map and other business. Compared with words and plane image, panoramic image is more vivid to record comprehensive information. Panoweaver 9 comes in two editions: Standard, Professional. What's New Edition Comparison Get Help What's New What's New in Panoweaver 9 Added features [+] add the function of removing the tripod by viewpoint correcting perfectly [+] add batch processing [+] optimize
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