gcloud beta ml vision detect-product - detect products within an image
gcloud beta ml vision detect-product IMAGE_PATH --category=[CATEGORY,...] (--product-set=PRODUCT_SET : --product-set-location=PRODUCT_SET_LOCATION) [--bounding-polygon=BOUNDING_POLYGON] [--filter=FILTER] [--max-results=MAX_RESULTS] [GCLOUD_WIDE_FLAG ...]
(BETA) detect products within an image
To detect product in image 'gs://my-bucket/my-image.jpg' by searching in product set 'my-product-set', in category 'toys', run:
$ gcloud beta ml vision detect-product gs://my-bucket/my-image.jpg \ --product-set='my-product-set' --product-set-location=us-east1 \ --category='toys'
- IMAGE_PATH
Path to the image to be analyzed. This can be either a local path or a URL. If you provide a local file, the contents will be sent directly to Google Cloud Vision. If you provide a URL, it must be in Google Cloud Storage format (gs://bucket/object) or an HTTP URL (http://... or https://...)
- --category=[CATEGORY,...]
Product category to search in. CATEGORY must be one of: apparel, homegoods, toys.
- Product set resource - The product set to be searched for similar images. The
arguments in this group can be used to specify the attributes of this resource. (NOTE) Some attributes are not given arguments in this group but can be set in other ways. To set the project attribute:
- —
provide the argument --product-set on the command line with a fully specified name;
- —
provide the argument --project on the command line;
- —
set the property core/project.
This must be specified.
- --product-set=PRODUCT_SET
ID of the product set or fully qualified identifier for the product set. To set the product-set attribute:
provide the argument --product-set on the command line.
This flag argument must be specified if any of the other arguments in this group are specified.
- --product-set-location=PRODUCT_SET_LOCATION
The location of the product set. To set the location attribute:
provide the argument --product-set on the command line with a fully specified name;
provide the argument --product-set-location on the command line.
- --bounding-polygon=BOUNDING_POLYGON
Bounding polygon around the areas of interest in the image. If it is not specified, system discretion will be applied. A bounding polygon can be specified by a list of vertices or normalized vertices. A vertex (x, y) represents a 2D point in the image. x, y are integers and are in the same scale as the original image. The normalized vertex coordinates are relative to orginal image and range from 0 to 1. For example, --bounding-polygon=0.,0.,0.,0.3,0.3,0.,0.3,0.3 specifies a polygon with 4 normalized vertices - (0., 0.), (0., 0.3), (0.3, 0.), (0.3, 0.3). Notice that the decimal point is needed for normalized vertex coordindates.
- --filter=FILTER
Filter expression to restrict search results based on product labels. ANDs of ORs of key-value expressions are supported, where expressions within an OR must have the same key. Expressions separated by AND must have different keys. An '=' should be used to connect the key and value. For example, '(color = red OR color = blue) AND brand = Google' is acceptable, but not '(color = red OR brand = Google)' or 'color: red'.
- --max-results=MAX_RESULTS
Maximum number of results to be provided.
These flags are available to all commands: --access-token-file, --account, --billing-project, --configuration, --flags-file, --flatten, --format, --help, --impersonate-service-account, --log-http, --project, --quiet, --trace-token, --user-output-enabled, --verbosity.
Run $ gcloud help for details.
This command uses the vision/v1 API. The full documentation for this API can be found at: https://cloud.google.com/vision/
This command is currently in beta and might change without notice. This variant is also available:
$ gcloud alpha ml vision detect-product