Ctrl+K
Logo image Logo image

Site Navigation

  • API Reference
  • Examples

Site Navigation

  • API Reference
  • Examples

Section Navigation

  • PyFlink DataFrame
    • DataFrame
    • DataFrame Creation
    • Input / Output
    • SQL
    • Data Types
    • User Defined Functions
    • Configuration
    • Catalog
    • GPU Support
    • AI / LLM
    • Multimodal Expressions
  • PyFlink Multimodal
  • PyFlink Table
  • PyFlink DataStream
  • PyFlink Common

pyflink.multimodal.expression.ImageExpressionAccessor.face_count#

ImageExpressionAccessor.face_count(*, cv_classifier: str = 'haarcascade_frontalface_alt.xml', min_neighbors: int = 3, scale_factor: float = 1.1, min_size: Optional[Union[List[int], Tuple[int, int]]] = None, max_size: Optional[Union[List[int], Tuple[int, int]]] = None, concurrency: Optional[int] = None) → pyflink.table.expression.Expression[source]#

Count faces in image values.

Equivalent to image_face_count(). See that function for full parameter details.

Parameters
  • cv_classifier – OpenCV cascade classifier file name.

  • min_neighbors – Minimum neighbor count for face detection.

  • scale_factor – Scale factor used by the detector pyramid.

  • min_size – Optional minimum face size.

  • max_size – Optional maximum face size.

  • concurrency – Optional execution concurrency for this operation. None uses the framework default.

Returns

A DataFrame expression that produces an INT face count.

previous

pyflink.multimodal.expression.ImageExpressionAccessor.face_detect

next

pyflink.multimodal.expression.ImageExpressionAccessor.face_blur

Show Source

Created using Sphinx 4.5.0.