▶ 調査レポート

世界のエッジコンピューティング型顔認証市場(~2027):デバイスタイプ別、コンポーネント別、用途別、地域別

• 英文タイトル:Face Recognition using Edge Computing Market Research Report by Device Type, Component, Application, Region - Global Forecast to 2027 - Cumulative Impact of COVID-19

360iResearchが調査・発行した産業分析レポートです。世界のエッジコンピューティング型顔認証市場(~2027):デバイスタイプ別、コンポーネント別、用途別、地域別 / Face Recognition using Edge Computing Market Research Report by Device Type, Component, Application, Region - Global Forecast to 2027 - Cumulative Impact of COVID-19 / MRC2304L196資料のイメージです。• レポートコード:MRC2304L196
• 出版社/出版日:360iResearch / 2022年10月
• レポート形態:英語、PDF、255ページ
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• 産業分類:IT
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レポート概要
360iResearch社は、2021年に1,125.58百万ドルであった世界のエッジコンピューティング型顔認証市場規模が、2022年に1,353.73百万ドルへと拡大し、その後CAGR 20.44%で成長して2027年までに3,436.64百万ドルに達すると予測しています。当書は、エッジコンピューティング型顔認証の世界市場を総合的に分析し、序論、調査方法、エグゼクティブサマリー、市場概要、市場インサイト、デバイスタイプ別(統合型、個別型)分析、コンポーネント別(ハードウェア、サービス、ソフトウェア)分析、用途別(アクセス制御、広告、出席追跡&モニタリング、eラーニング、感情認識)分析、地域別(南北アメリカ、アメリカ、カナダ、ブラジル、アジア太平洋、日本、中国、インド、韓国、台湾、ヨーロッパ/中東/アフリカ、イギリス、ドイツ、フランス、ロシア、その他)分析、競争状況、企業情報などの項目をまとめています。なお、当書に掲載されている企業情報には、Alphabet, Inc.、Apple, Inc.、Applied Brain Research、Arm Holdings、Cadence Design Systems, Inc.、Horizon Robotics、Huawei Technologies Co., Ltd.、IDEMIA、Mediatek, Inc.、Micron Technology、Microsoft Corporation、NVIDIA Corporationなどが含まれています。
・序論
・調査方法
・エグゼクティブサマリー
・市場概要
・市場インサイト
・世界のエッジコンピューティング型顔認証市場規模:デバイスタイプ別
- 統合型デバイスの市場規模
- 個別型デバイスの市場規模
・世界のエッジコンピューティング型顔認証市場規模:コンポーネント別
- ハードウェアの市場規模
- サービスの市場規模
- ソフトウェアの市場規模
・世界のエッジコンピューティング型顔認証市場規模:用途別
- アクセス制御における市場規模
- 広告における市場規模
- 出席追跡&モニタリングにおける市場規模
- eラーニングにおける市場規模
- 感情認識における市場規模
・世界のエッジコンピューティング型顔認証市場規模:地域別
- 南北アメリカのエッジコンピューティング型顔認証市場規模
アメリカのエッジコンピューティング型顔認証市場規模
カナダのエッジコンピューティング型顔認証市場規模
ブラジルのエッジコンピューティング型顔認証市場規模
...
- アジア太平洋のエッジコンピューティング型顔認証市場規模
日本のエッジコンピューティング型顔認証市場規模
中国のエッジコンピューティング型顔認証市場規模
インドのエッジコンピューティング型顔認証市場規模
韓国のエッジコンピューティング型顔認証市場規模
台湾のエッジコンピューティング型顔認証市場規模
...
- ヨーロッパ/中東/アフリカのエッジコンピューティング型顔認証市場規模
イギリスのエッジコンピューティング型顔認証市場規模
ドイツのエッジコンピューティング型顔認証市場規模
フランスのエッジコンピューティング型顔認証市場規模
ロシアのエッジコンピューティング型顔認証市場規模
...
- その他地域のエッジコンピューティング型顔認証市場規模
・競争状況
・企業情報

The Global Face Recognition using Edge Computing Market size was estimated at USD 1,125.58 million in 2021 and expected to reach USD 1,353.73 million in 2022, and is projected to grow at a CAGR 20.44% to reach USD 3,436.64 million by 2027.

Market Statistics:
The report provides market sizing and forecast across 7 major currencies – USD, EUR, JPY, GBP, AUD, CAD, and CHF. It helps organization leaders make better decisions when currency exchange data is readily available. In this report, the years 2018 and 2020 are considered as historical years, 2021 as the base year, 2022 as the estimated year, and years from 2023 to 2027 are considered as the forecast period.

Market Segmentation & Coverage:
This research report categorizes the Face Recognition using Edge Computing to forecast the revenues and analyze the trends in each of the following sub-markets:

Based on Device Type, the market was studied across Integrated and Standalone.

Based on Component, the market was studied across Hardware, Services, and Software.

Based on Application, the market was studied across Access Control, Advertising, Attendance Tracking & Monitoring, eLearning, Emotion Recognition, Law Enforcement, Payment, and Robotics.

Based on Region, the market was studied across Americas, Asia-Pacific, and Europe, Middle East & Africa. The Americas is further studied across Argentina, Brazil, Canada, Mexico, and United States. The United States is further studied across California, Florida, Illinois, New York, Ohio, Pennsylvania, and Texas. The Asia-Pacific is further studied across Australia, China, India, Indonesia, Japan, Malaysia, Philippines, Singapore, South Korea, Taiwan, Thailand, and Vietnam. The Europe, Middle East & Africa is further studied across Denmark, Egypt, Finland, France, Germany, Israel, Italy, Netherlands, Nigeria, Norway, Poland, Qatar, Russia, Saudi Arabia, South Africa, Spain, Sweden, Switzerland, Turkey, United Arab Emirates, and United Kingdom.

Cumulative Impact of COVID-19:
COVID-19 is an incomparable global public health emergency that has affected almost every industry, and the long-term effects are projected to impact the industry growth during the forecast period. Our ongoing research amplifies our research framework to ensure the inclusion of underlying COVID-19 issues and potential paths forward. The report delivers insights on COVID-19 considering the changes in consumer behavior and demand, purchasing patterns, re-routing of the supply chain, dynamics of current market forces, and the significant interventions of governments. The updated study provides insights, analysis, estimations, and forecasts, considering the COVID-19 impact on the market.

Cumulative Impact of 2022 Russia Ukraine Conflict:
We continuously monitor and update reports on political and economic uncertainty due to the Russian invasion of Ukraine. Negative impacts are significantly foreseen globally, especially across Eastern Europe, European Union, Eastern & Central Asia, and the United States. This contention has severely affected lives and livelihoods and represents far-reaching disruptions in trade dynamics. The potential effects of ongoing war and uncertainty in Eastern Europe are expected to have an adverse impact on the world economy, with especially long-term harsh effects on Russia.This report uncovers the impact of demand & supply, pricing variants, strategic uptake of vendors, and recommendations for Face Recognition using Edge Computing market considering the current update on the conflict and its global response.

Competitive Strategic Window:
The Competitive Strategic Window analyses the competitive landscape in terms of markets, applications, and geographies to help the vendor define an alignment or fit between their capabilities and opportunities for future growth prospects. It describes the optimal or favorable fit for the vendors to adopt successive merger and acquisition strategies, geography expansion, research & development, and new product introduction strategies to execute further business expansion and growth during a forecast period.

FPNV Positioning Matrix:
The FPNV Positioning Matrix evaluates and categorizes the vendors in the Face Recognition using Edge Computing Market based on Business Strategy (Business Growth, Industry Coverage, Financial Viability, and Channel Support) and Product Satisfaction (Value for Money, Ease of Use, Product Features, and Customer Support) that aids businesses in better decision making and understanding the competitive landscape.

Market Share Analysis:
The Market Share Analysis offers the analysis of vendors considering their contribution to the overall market. It provides the idea of its revenue generation into the overall market compared to other vendors in the space. It provides insights into how vendors are performing in terms of revenue generation and customer base compared to others. Knowing market share offers an idea of the size and competitiveness of the vendors for the base year. It reveals the market characteristics in terms of accumulation, fragmentation, dominance, and amalgamation traits.

Competitive Scenario:
The Competitive Scenario provides an outlook analysis of the various business growth strategies adopted by the vendors. The news covered in this section deliver valuable thoughts at the different stage while keeping up-to-date with the business and engage stakeholders in the economic debate. The competitive scenario represents press releases or news of the companies categorized into Merger & Acquisition, Agreement, Collaboration, & Partnership, New Product Launch & Enhancement, Investment & Funding, and Award, Recognition, & Expansion. All the news collected help vendor to understand the gaps in the marketplace and competitor’s strength and weakness thereby, providing insights to enhance product and service.

Company Usability Profiles:
The report profoundly explores the recent significant developments by the leading vendors and innovation profiles in the Global Face Recognition using Edge Computing Market, including Alphabet, Inc., Apple, Inc., Applied Brain Research, Arm Holdings, Cadence Design Systems, Inc., Horizon Robotics, Huawei Technologies Co., Ltd., IDEMIA, Mediatek, Inc., Micron Technology, Microsoft Corporation, NVIDIA Corporation, Qualcomm Incorporated, Samsung Electronics, and Xilinx, Inc..

The report provides insights on the following pointers:
1. Market Penetration: Provides comprehensive information on the market offered by the key players
2. Market Development: Provides in-depth information about lucrative emerging markets and analyze penetration across mature segments of the markets
3. Market Diversification: Provides detailed information about new product launches, untapped geographies, recent developments, and investments
4. Competitive Assessment & Intelligence: Provides an exhaustive assessment of market shares, strategies, products, certification, regulatory approvals, patent landscape, and manufacturing capabilities of the leading players
5. Product Development & Innovation: Provides intelligent insights on future technologies, R&D activities, and breakthrough product developments

The report answers questions such as:
1. What is the market size and forecast of the Global Face Recognition using Edge Computing Market?
2. What are the inhibiting factors and impact of COVID-19 shaping the Global Face Recognition using Edge Computing Market during the forecast period?
3. Which are the products/segments/applications/areas to invest in over the forecast period in the Global Face Recognition using Edge Computing Market?
4. What is the competitive strategic window for opportunities in the Global Face Recognition using Edge Computing Market?
5. What are the technology trends and regulatory frameworks in the Global Face Recognition using Edge Computing Market?
6. What is the market share of the leading vendors in the Global Face Recognition using Edge Computing Market?
7. What modes and strategic moves are considered suitable for entering the Global Face Recognition using Edge Computing Market?

レポート目次

1. Preface
1.1. Objectives of the Study
1.2. Market Segmentation & Coverage
1.3. Years Considered for the Study
1.4. Currency & Pricing
1.5. Language
1.6. Limitations
1.7. Assumptions
1.8. Stakeholders

2. Research Methodology
2.1. Define: Research Objective
2.2. Determine: Research Design
2.3. Prepare: Research Instrument
2.4. Collect: Data Source
2.5. Analyze: Data Interpretation
2.6. Formulate: Data Verification
2.7. Publish: Research Report
2.8. Repeat: Report Update

3. Executive Summary

4. Market Overview

5. Market Insights
5.1. Market Dynamics
5.1.1. Drivers
5.1.1.1. Increasing adoption of facial recognition using edge computing
5.1.1.2. Growing adoption to resolve latency-specific issues in face recognition applications
5.1.1.3. Succoring real-time and intelligent applications
5.1.2. Restraints
5.1.2.1. Issues over security and user mobilty
5.1.3. Opportunities
5.1.3.1. Seamless and personalized experience to improve business processes
5.1.3.2. Increasing integration with AI drones and video surveillance
5.1.4. Challenges
5.1.4.1. Technical and computational issues with embedded device such as interoperability, accessibility, and configuration
5.2. Cumulative Impact of COVID-19

6. Face Recognition using Edge Computing Market, by Device Type
6.1. Introduction
6.2. Integrated
6.3. Standalone

7. Face Recognition using Edge Computing Market, by Component
7.1. Introduction
7.2. Hardware
7.3. Services
7.4. Software

8. Face Recognition using Edge Computing Market, by Application
8.1. Introduction
8.2. Access Control
8.3. Advertising
8.4. Attendance Tracking & Monitoring
8.5. eLearning
8.6. Emotion Recognition
8.7. Law Enforcement
8.8. Payment
8.9. Robotics

9. Americas Face Recognition using Edge Computing Market
9.1. Introduction
9.2. Argentina
9.3. Brazil
9.4. Canada
9.5. Mexico
9.6. United States

10. Asia-Pacific Face Recognition using Edge Computing Market
10.1. Introduction
10.2. Australia
10.3. China
10.4. India
10.5. Indonesia
10.6. Japan
10.7. Malaysia
10.8. Philippines
10.9. Singapore
10.10. South Korea
10.11. Taiwan
10.12. Thailand
10.13. Vietnam

11. Europe, Middle East & Africa Face Recognition using Edge Computing Market
11.1. Introduction
11.2. Denmark
11.3. Egypt
11.4. Finland
11.5. France
11.6. Germany
11.7. Israel
11.8. Italy
11.9. Netherlands
11.10. Nigeria
11.11. Norway
11.12. Poland
11.13. Qatar
11.14. Russia
11.15. Saudi Arabia
11.16. South Africa
11.17. Spain
11.18. Sweden
11.19. Switzerland
11.20. Turkey
11.21. United Arab Emirates
11.22. United Kingdom

12. Competitive Landscape
12.1. FPNV Positioning Matrix
12.1.1. Quadrants
12.1.2. Business Strategy
12.1.3. Product Satisfaction
12.2. Market Ranking Analysis, By Key Player
12.3. Market Share Analysis, By Key Player
12.4. Competitive Scenario
12.4.1. Merger & Acquisition
12.4.2. Agreement, Collaboration, & Partnership
12.4.3. New Product Launch & Enhancement
12.4.4. Investment & Funding
12.4.5. Award, Recognition, & Expansion

13. Company Usability Profiles
13.1. Alphabet, Inc.
13.1.1. Business Overview
13.1.2. Key Executives
13.1.3. Product & Services
13.2. Apple, Inc.
13.2.1. Business Overview
13.2.2. Key Executives
13.2.3. Product & Services
13.3. Applied Brain Research
13.3.1. Business Overview
13.3.2. Key Executives
13.3.3. Product & Services
13.4. Arm Holdings
13.4.1. Business Overview
13.4.2. Key Executives
13.4.3. Product & Services
13.5. Cadence Design Systems, Inc.
13.5.1. Business Overview
13.5.2. Key Executives
13.5.3. Product & Services
13.6. Horizon Robotics
13.6.1. Business Overview
13.6.2. Key Executives
13.6.3. Product & Services
13.7. Huawei Technologies Co., Ltd.
13.7.1. Business Overview
13.7.2. Key Executives
13.7.3. Product & Services
13.8. IDEMIA
13.8.1. Business Overview
13.8.2. Key Executives
13.8.3. Product & Services
13.9. Mediatek, Inc.
13.9.1. Business Overview
13.9.2. Key Executives
13.9.3. Product & Services
13.10. Micron Technology
13.10.1. Business Overview
13.10.2. Key Executives
13.10.3. Product & Services
13.11. Microsoft Corporation
13.11.1. Business Overview
13.11.2. Key Executives
13.11.3. Product & Services
13.12. NVIDIA Corporation
13.12.1. Business Overview
13.12.2. Key Executives
13.12.3. Product & Services
13.13. Qualcomm Incorporated
13.13.1. Business Overview
13.13.2. Key Executives
13.13.3. Product & Services
13.14. Samsung Electronics
13.14.1. Business Overview
13.14.2. Key Executives
13.14.3. Product & Services
13.15. Xilinx, Inc.
13.15.1. Business Overview
13.15.2. Key Executives
13.15.3. Product & Services

14. Appendix
14.1. Discussion Guide
14.2. License & Pricing