
Affectiva Review: Is It The Right Image Recognition Software For Your Team?
Best for SMB teams · Mid-market · Enterprise
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Affectiva offers custom pricing plan
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What is Affectiva?
Affectiva is now a Smart Eye company. In June 2021, Smart Eye acquired Affectiva. We are merging the two companies to form a global AI powerhouse. Affectiva is on a mission to humanize technology. An MIT Media Lab spin-off, Affectiva created and defined the Emotion AI and Human Perception AI categories. Built on deep learning, computer vision, speech science, and massive amounts of real-world data, Affectiva’s technology can detect nuanced human emotions, complex cognitive states, activities, interactions, and objects people use. In automotive, Affectiva’s Interior Sensing AI is enabling leading car manufacturers, fleet managers, and ridesharing companies to build next-generation mobility that understands the state of the driver, the cabin, and the occupants in it. Affectiva’s technology is also used by 28 percent of the Fortune Global 500 companies to test consumer engagement with ads, videos, and TV programming.
Pricing
Affectiva offers custom pricing plan
Best For
Suited for solo users, small teams, SMBs, and enterprise
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Affectiva was reviewed internally using user feedback, in-house testing, and market research to assess its performance, reliability, and user experience. Learn how we review products and our evaluation process.
Who should consider Affectiva
- Team types
- Large Enterprises, Medium Business
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Compare Affectiva side-by-side with top Image Recognition Software alternatives.
What is the pricing of Affectiva?
Affectiva uses custom pricing — plans are tailored to your team size and needs. Contact them for a quote.
What are the features of Affectiva?
Auto-tagging (Image) is a feature that utilizes advanced image recognition technology to automatically assign relevant tags or labels to ima…
Custom Classification is a feature that is commonly found in software applications. It is a method of organizing and categorizing data in a…
Explicit content detection is a crucial feature in modern software systems, especially those that deal with multimedia content such as image…
Facial analysis is a unique feature that uses advanced technologies to analyze and interpret facial expressions, features, and emotions. It…
Facial recognition technology is a cutting-edge feature that allows software to identify and authenticate an individual's face. It works by…
Image classification is a feature commonly utilized in various software applications to automatically identify, categorize, and organize dig…
Object detection is a powerful software feature that allows users to identify and locate different objects within an image or video. It util…
Product Search is a powerful and comprehensive tool that allows users to quickly and easily search for specific products within a database o…
Scene detection is a feature that is commonly found in video editing software, designed to simplify the process of editing and organizing vi…
Text in Image is a powerful software feature that allows users to insert text into images seamlessly. Whether it's for creating promotional…
Affectiva Support Options
Frequently Asked Questions About Affectiva
Common questions buyers ask before choosing Affectiva.
Affectiva is a Image Recognition Software. Affectiva offers Object Detection, Product Search, Image Classification, Auto-tagging (Image), Facial Recognition and many more functionalities.
Some top alternatives to Affectiva includes Clarifai, Hasty, People for AI, Amazon Rekognition and Azure Video Indexer.
Affectiva offers Quotation Based pricing model
The starting price is not disclosed by Affectiva. You can visit Affectiva pricing page to get the latest pricing.
Ready to try it?
Get started with Affectiva
Get connected with the team for a personalised demo.
Disclaimer: This research has been collated from a variety of authoritative sources. We welcome your feedback at [email protected].








