Annotate images with the ML.ANNOTATE_IMAGE function
This document describes how to use the
ML.ANNOTATE_IMAGE
function
with a
remote model
to annotate images from an
object table.
Required permissions
To create a connection, you need membership in the following role:
roles/bigquery.connectionAdmin
To grant permissions to the connection's service account, you need the following permission:
resourcemanager.projects.setIamPolicy
To create the model using BigQuery ML, you need the following permissions:
bigquery.jobs.create
bigquery.models.create
bigquery.models.getData
bigquery.models.updateData
bigquery.models.updateMetadata
To run inference, you need the following permissions:
bigquery.tables.getData
on the object tablebigquery.models.getData
on the modelbigquery.jobs.create
Before you begin
- Sign in to your Google Cloud account. If you're new to Google Cloud, create an account to evaluate how our products perform in real-world scenarios. New customers also get $300 in free credits to run, test, and deploy workloads.
-
In the Google Cloud console, on the project selector page, select or create a Google Cloud project.
-
Make sure that billing is enabled for your Google Cloud project.
-
Enable the BigQuery, BigQuery Connection API, and Cloud Vision API APIs.
-
In the Google Cloud console, on the project selector page, select or create a Google Cloud project.
-
Make sure that billing is enabled for your Google Cloud project.
-
Enable the BigQuery, BigQuery Connection API, and Cloud Vision API APIs.
Create a connection
Create a cloud resource connection and get the connection's service account.
Select one of the following options:
Console
Go to the BigQuery page.
To create a connection, click
Add, and then click Connections to external data sources.In the Connection type list, select Vertex AI remote models, remote functions and BigLake (Cloud Resource).
In the Connection ID field, enter a name for your connection.
Click Create connection.
Click Go to connection.
In the Connection info pane, copy the service account ID for use in a later step.
bq
In a command-line environment, create a connection:
bq mk --connection --location=REGION --project_id=PROJECT_ID \ --connection_type=CLOUD_RESOURCE CONNECTION_ID
The
--project_id
parameter overrides the default project.Replace the following:
REGION
: your connection regionPROJECT_ID
: your Google Cloud project IDCONNECTION_ID
: an ID for your connection
When you create a connection resource, BigQuery creates a unique system service account and associates it with the connection.
Troubleshooting: If you get the following connection error, update the Google Cloud SDK:
Flags parsing error: flag --connection_type=CLOUD_RESOURCE: value should be one of...
Retrieve and copy the service account ID for use in a later step:
bq show --connection PROJECT_ID.REGION.CONNECTION_ID
The output is similar to the following:
name properties 1234.REGION.CONNECTION_ID {"serviceAccountId": "connection-1234-9u56h9@gcp-sa-bigquery-condel.iam.gserviceaccount.com"}
Terraform
Append the following section into your main.tf
file.
## This creates a cloud resource connection. ## Note: The cloud resource nested object has only one output only field - serviceAccountId. resource "google_bigquery_connection" "connection" { connection_id = "CONNECTION_ID" project = "PROJECT_ID" location = "REGION" cloud_resource {} }
CONNECTION_ID
: an ID for your connectionPROJECT_ID
: your Google Cloud project IDREGION
: your connection region
Grant access to the service account
Select one of the following options:
Console
Go to the IAM & Admin page.
Click
Add.The Add principals dialog opens.
In the New principals field, enter the service account ID that you copied earlier.
In the Select a role field, select Service Usage, and then select Service Usage Consumer.
Click Add another role.
In the Select a role field, select BigQuery, and then select BigQuery Connection User.
Click Save.
gcloud
Use the
gcloud projects add-iam-policy-binding
command:
gcloud projects add-iam-policy-binding 'PROJECT_NUMBER' --member='serviceAccount:MEMBER' --role='roles/serviceusage.serviceUsageConsumer' --condition=None gcloud projects add-iam-policy-binding 'PROJECT_NUMBER' --member='serviceAccount:MEMBER' --role='roles/bigquery.connectionUser' --condition=None
Replace the following:
PROJECT_NUMBER
: your project number.MEMBER
: the service account ID that you copied earlier.
Failure to grant the permission results in an error.
Create an object table
Create an object table that has image contents. The object table makes it possible to analyze the images without moving them from Cloud Storage.
The Cloud Storage bucket used by the object table should be in the
same project where you plan to create the model and call the
ML.ANNOTATE_IMAGE
function. If you want to call the
ML.ANNOTATE_IMAGE
function in a different project than the one
that contains the Cloud Storage bucket used by the object table, you must
grant the Storage Admin role at the bucket level.
Create a model
Create a remote model with a
REMOTE_SERVICE_TYPE
of
CLOUD_AI_VISION_V1
:
CREATE OR REPLACE MODEL `PROJECT_ID.DATASET_ID.MODEL_NAME` REMOTE WITH CONNECTION PROJECT_ID.REGION.CONNECTION_ID OPTIONS (REMOTE_SERVICE_TYPE = 'CLOUD_AI_VISION_V1');
Replace the following:
PROJECT_ID
: your project ID.DATASET_ID
: the ID of the dataset to contain the model. This dataset must be in the same location as the connection that you are using.MODEL_NAME
: the name of the model.REGION
: the region used by the connection.CONNECTION_ID
: the connection ID—for example,myconnection
.When you view the connection details in the Google Cloud console, the connection ID is the value in the last section of the fully qualified connection ID that is shown in Connection ID—for example
projects/myproject/locations/connection_location/connections/myconnection
.
Annotate images
Annotate images with the ML.ANNOTATE_IMAGE
function:
SELECT * FROM ML.ANNOTATE_IMAGE( MODEL `PROJECT_ID.DATASET_ID.MODEL_NAME`, TABLE PROJECT_ID.DATASET_ID.OBJECT_TABLE_NAME, STRUCT(['FEATURE_NAME' [,...]] AS vision_features) );
Replace the following:
PROJECT_ID
: your project ID.DATASET_ID
: the ID of the dataset that contains the model.MODEL_NAME
: the name of the model.OBJECT_TABLE_NAME
: the name of the object table that contains the URIs of the images to annotate.FEATURE_NAME
: the name of a supported Cloud Vision API feature.
Example 1
The following example labels the items shown in the images:
SELECT * FROM ML.ANNOTATE_IMAGE( MODEL `myproject.mydataset.myvisionmodel`, TABLE myproject.mydataset.image_table, STRUCT(['label_detection'] AS vision_features) );
Example 2
The following example detects any faces shown in the images, and also returns image attributes, like dominant colors:
SELECT * FROM ML.ANNOTATE_IMAGE( MODEL `myproject.mydataset.myvisionmodel`, TABLE myproject.mydataset.image_table, STRUCT(['face_detection', 'image_properties'] AS vision_features) );
What's next
- To learn more about model inference, including other functions you can use to analyze BigQuery data, see Model inference overview.
- For information about the supported SQL statements and functions for each model type, see End-to-end user journey for each model.
- Try the Unstructured data analytics with BigQuery ML and Vertex AI pre-trained models notebook.