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Global Image Recognition Market 2014-2018

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Global Image Recognition Market 2014-2018
Global Image Recognition Market 2014-2018

Image recognition is a technology to acquire, analyze, and interpret images and distinguish them from one another. It can identify and detect an object or feature in a digital image or video and is used for access control in high-security areas, private and public buildings, and in intelligent office buildings where a person's identity and permission rights are to be verified.

Covered in this Report
This report covers the present scenario and the growth prospects of the Global Image Recognition market for the period 2013-2018. To calculate the market size, the report considers revenue generated from the sales of image recognition solutions in the global market. The Global Image Recognition market is categorized on the basis of solutions, deployment models, applications, and geographical locations.

Key Regions

North America
Europe
Asia Pacific
Middle-East and Africa
Latin America

Key Vendors

Catchoom
Honeywell International Inc. iTraff Technology Sp. z o.o.
LTU Technologies SAS

Other Prominent Vendors

Blipper
Hitachi
NEC
Panasonic
Qualcomm
Sharp Vision Software
Toshiba
Wikitude

Key Market Driver

Need for Advanced Security in the Government Sector
For a full, detailed list, view our report.

Key Market Challenge

Lack of Accuracy
For a full, detailed list, view our report.

Key Market Trend

Increase in Adoption by the Retail Sector
For a full, detailed list, view our report.

Key Questions Answered in this Report

What will the market size be in 2018 and what will the growth rate be?
What are the key market trends?
What is driving this market?
What are the challenges to market growth?
Who are the key vendors in this market space?
What are the market opportunities and threats faced by the key vendors?
What are the strengths and weaknesses of the key vendors?

For more insights, view our Global Image Recognition Market 2014-2018 report.

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