Ocr Config
immichpy.client.generated.models.ocr_config.OcrConfig
pydantic-model
Bases: BaseModel
OcrConfig
Show JSON schema:
{
"description": "OcrConfig",
"properties": {
"enabled": {
"description": "Whether the task is enabled",
"title": "Enabled",
"type": "boolean"
},
"maxResolution": {
"description": "Maximum resolution for OCR processing",
"minimum": 1,
"title": "Maxresolution",
"type": "integer"
},
"minDetectionScore": {
"anyOf": [
{
"maximum": 1,
"minimum": 0.1,
"type": "number"
},
{
"maximum": 1,
"minimum": 1,
"type": "integer"
}
],
"description": "Minimum confidence score for text detection",
"title": "Mindetectionscore"
},
"minRecognitionScore": {
"anyOf": [
{
"maximum": 1,
"minimum": 0.1,
"type": "number"
},
{
"maximum": 1,
"minimum": 1,
"type": "integer"
}
],
"description": "Minimum confidence score for text recognition",
"title": "Minrecognitionscore"
},
"modelName": {
"description": "Name of the model to use",
"title": "Modelname",
"type": "string"
}
},
"required": [
"enabled",
"maxResolution",
"minDetectionScore",
"minRecognitionScore",
"modelName"
],
"title": "OcrConfig",
"type": "object"
}
Config:
populate_by_name:Truevalidate_assignment:Trueprotected_namespaces:()
Fields:
-
enabled(StrictBool) -
max_resolution(Annotated[int, Field(strict=True, ge=1)]) -
min_detection_score(Union[Annotated[float, Field(le=1, strict=True, ge=0.1)], Annotated[int, Field(le=1, strict=True, ge=1)]]) -
min_recognition_score(Union[Annotated[float, Field(le=1, strict=True, ge=0.1)], Annotated[int, Field(le=1, strict=True, ge=1)]]) -
model_name(StrictStr)
enabled
pydantic-field
enabled: StrictBool
Whether the task is enabled
max_resolution
pydantic-field
max_resolution: Annotated[int, Field(strict=True, ge=1)]
Maximum resolution for OCR processing
min_detection_score
pydantic-field
min_detection_score: Union[Annotated[float, Field(le=1, strict=True, ge=0.1)], Annotated[int, Field(le=1, strict=True, ge=1)]]
Minimum confidence score for text detection
min_recognition_score
pydantic-field
min_recognition_score: Union[Annotated[float, Field(le=1, strict=True, ge=0.1)], Annotated[int, Field(le=1, strict=True, ge=1)]]
Minimum confidence score for text recognition
model_name
pydantic-field
model_name: StrictStr
Name of the model to use
from_dict
classmethod
from_dict(obj: Optional[Dict[str, Any]]) -> Optional[Self]
Create an instance of OcrConfig from a dict
Source code in immichpy/client/generated/models/ocr_config.py
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from_json
classmethod
from_json(json_str: str) -> Optional[Self]
Create an instance of OcrConfig from a JSON string
Source code in immichpy/client/generated/models/ocr_config.py
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to_dict
to_dict() -> Dict[str, Any]
Return the dictionary representation of the model using alias.
This has the following differences from calling pydantic's
self.model_dump(by_alias=True):
Noneis only added to the output dict for nullable fields that were set at model initialization. Other fields with valueNoneare ignored.
Source code in immichpy/client/generated/models/ocr_config.py
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to_json
to_json() -> str
Returns the JSON representation of the model using alias
Source code in immichpy/client/generated/models/ocr_config.py
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to_str
to_str() -> str
Returns the string representation of the model using alias
Source code in immichpy/client/generated/models/ocr_config.py
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