FlowRunner
Pricing
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AWS Rekognition

AI

Analyze images with Amazon Rekognition: detect objects, text, faces, unsafe content, celebrities, and protective equipment, and manage face collections for search and comparison.

13 actions available
New photo uploaded to a claims submission
Agent runs Detect Labels and Detect Text on the image
Agent checks for required protective equipment with Detect Protective Equipment
Agent matches the readable serial number against the policy record
Agent attaches the detections to the claim file
Adjuster gets a summary of what the image contains
A missing safety flag or an unclear match routes to an adjuster to review

What This Integration Enables

Rekognition reads what is in an image. It labels objects and scenes, extracts text, detects and compares faces, screens for unsafe content, and checks for protective equipment. Face collections let an agent index known faces and search or match against them, which is useful for access and identity workflows. These are consequential detections. A face match or a safety flag can trigger a real-world action, so the model's confidence and a person's judgment both matter. An orchestration layer is what routes high-confidence detections straight through and holds the borderline ones for review, and FlowRunner is built for that layer. The model does the looking; a person owns the calls that carry weight.

Without FlowRunner

Images reviewed manually An adjuster opens each photo and notes what it shows
Text in images re-keyed Serial numbers and plates get typed in by hand
Safety checks by eye A person scans photos for missing protective equipment

With FlowRunner

Detections in the flow Objects, text, and faces are read as the image arrives
Text extracted automatically Readable codes in images become structured fields
Safety flagged by the model Missing protective equipment is surfaced for a person to confirm

Use Case Scenarios

Claims Image Intake

Photos submitted with an insurance claim need to be catalogued and checked. The agent runs label and text detection on each image, reads the visible serial number, and matches it against the policy record. It attaches a structured summary to the claim. The adjuster reviews a catalogued file instead of opening every photo, and anything the model reads with low confidence is flagged for a person.

Workplace Safety Monitoring

Site photos are submitted for a safety audit. The agent runs Detect Protective Equipment on each image to check whether required gear is present. Images that pass are logged automatically. Any image where equipment is missing or the detection is uncertain is routed to a safety officer with the photo and the model's read, so a person confirms every potential violation.

Content Screening

User-uploaded images need screening before they go live. The agent runs moderation detection on each upload. Clean images publish. Anything the model flags as potentially unsafe is held and routed to a moderator with the model's labels attached, so the borderline calls are made by a person rather than a threshold.

Human-in-Loop Highlight

A face match or a safety flag is exactly the kind of detection that should not act on its own. When Rekognition returns a face match, a missing-equipment result, or an unsafe-content flag, FlowRunner routes it through a [human-in-the-loop](/concepts/human-in-the-loop/) step: the agent pauses, assembles the image and the detection with its confidence score, and sends it to the responsible person via Slack. They confirm or reject. The model surfaces the candidates; a person owns every consequential match.

Agent processes routinely
Detects exception requiring judgment
Clear match Continues automatically
Ambiguous Routes to human via Slack
Human decides
Agent resumes with decision

Agent Capabilities

13 actions

Image Analysis

4
  • Detect Labels Detects real-world objects, scenes, concepts, and activities in an image, each with a confidence score, and returns bounding boxes for detected instances.
  • Detect Text Detects text in an image and returns each detected line and word with its confidence and bounding geometry.
  • Detect Moderation Labels Detects unsafe or inappropriate content in an image (such as explicit or suggestive nudity, violence, drugs, hate symbols, and more), returning hierarchical moderation categories with confidence scores.
  • Detect Protective Equipment Detects personal protective equipment (PPE) worn by people in an image, reporting per-person body parts and whether each is covered by a face cover, hand cover, or head cover, plus an overall summary of persons with and without required equipment.

Face Analysis

3
  • Detect Faces Detects faces in an image and returns per-face details such as bounding box, quality, pose, and (when All Attributes is enabled) age range, emotions, facial landmarks, gender, and attributes like smile, eyeglasses, and beard.
  • Recognize Celebrities Recognizes well-known people in an image and returns matched celebrities with their name, ID, match confidence, and known URLs, plus a count of unrecognized faces.
  • Compare Faces Compares the largest face in a source image against faces in a target image and returns matches above a similarity threshold, along with unmatched faces.

Collections

6
  • Create Collection Creates a face collection, a server-side container used to store searchable face vectors indexed from images.
  • List Collections Lists the face collection IDs in the configured region and account, along with the face model version used by each.
  • Delete Collection Permanently deletes a face collection and all of the faces indexed within it. This action cannot be undone.
  • Index Faces Detects faces in an image and adds them to the specified collection as searchable face vectors, optionally tagging them with an external image ID.
  • Search Faces by Image Searches a collection for faces matching the largest face detected in the supplied image, returning matches above a similarity threshold.
  • List Faces Lists the faces indexed in a collection, returning each face's ID, bounding box, external image ID, and confidence.

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