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* feat: add OCR functionality and related configurations * chore: update labeler configuration for machine learning files * feat(i18n): enhance OCR model descriptions and add orientation classification and unwarping features * chore: update Dockerfile to include ccache for improved build performance * feat(ocr): enhance OCR model configuration with orientation classification and unwarping options, update PaddleOCR integration, and improve response structure * refactor(ocr): remove OCR_CLEANUP job from enum and type definitions * refactor(ocr): remove obsolete OCR entity and migration files, and update asset job status and schema to accommodate new OCR table structure * refactor(ocr): update OCR schema and response structure to use individual coordinates instead of bounding box, and adjust related service and repository files * feat: enhance OCR configuration and functionality - Updated OCR settings to include minimum detection box score, minimum detection score, and minimum recognition score. - Refactored PaddleOCRecognizer to utilize new scoring parameters. - Introduced new database tables for asset OCR data and search functionality. - Modified related services and repositories to support the new OCR features. - Updated translations for improved clarity in settings UI. * sql changes * use rapidocr * change dto * update web * update lock * update api * store positions as normalized floats * match column order in db * update admin ui settings descriptions fix max resolution key set min threshold to 0.1 fix bind * apply config correctly, adjust defaults * unnecessary model type * unnecessary sources * fix(ocr): switch RapidOCR lang type from LangDet to LangRec * fix(ocr): expose lang_type (LangRec.CH) and font_path on OcrOptions for RapidOCR * fix(ocr): make OCR text search case- and accent-insensitive using ILIKE + unaccent * fix(ocr): add OCR search fields * fix: Add OCR database migration and update ML prediction logic. * trigrams are already case insensitive * add tests * format * update migrations * wrong uuid function * linting * maybe fix medium tests * formatting * fix weblate check * openapi * sql * minor fixes * maybe fix medium tests part 2 * passing medium tests * format web * readd sql * format dart * disabled in e2e * chore: translation ordering --------- Co-authored-by: mertalev <101130780+mertalev@users.noreply.github.com> Co-authored-by: Alex Tran <alex.tran1502@gmail.com>
118 lines
2.3 KiB
Python
118 lines
2.3 KiB
Python
from enum import Enum
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from typing import Any, Literal, Protocol, TypeGuard, TypeVar
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import numpy as np
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import numpy.typing as npt
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from typing_extensions import TypedDict
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class StrEnum(str, Enum):
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value: str
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def __str__(self) -> str:
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return self.value
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class BoundingBox(TypedDict):
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x1: int
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y1: int
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x2: int
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y2: int
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class ModelTask(StrEnum):
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FACIAL_RECOGNITION = "facial-recognition"
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SEARCH = "clip"
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OCR = "ocr"
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class ModelType(StrEnum):
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DETECTION = "detection"
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RECOGNITION = "recognition"
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TEXTUAL = "textual"
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VISUAL = "visual"
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class ModelFormat(StrEnum):
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ARMNN = "armnn"
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ONNX = "onnx"
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RKNN = "rknn"
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class ModelSource(StrEnum):
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INSIGHTFACE = "insightface"
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MCLIP = "mclip"
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OPENCLIP = "openclip"
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PADDLE = "paddle"
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ModelIdentity = tuple[ModelType, ModelTask]
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class SessionNode(Protocol):
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@property
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def name(self) -> str | None: ...
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@property
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def shape(self) -> tuple[int, ...]: ...
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class ModelSession(Protocol):
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def run(
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self,
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output_names: list[str] | None,
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input_feed: dict[str, npt.NDArray[np.float32]] | dict[str, npt.NDArray[np.int32]],
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run_options: Any = None,
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) -> list[npt.NDArray[np.float32]]: ...
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def get_inputs(self) -> list[SessionNode]: ...
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def get_outputs(self) -> list[SessionNode]: ...
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class HasProfiling(Protocol):
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profiling: dict[str, float]
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class FaceDetectionOutput(TypedDict):
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boxes: npt.NDArray[np.float32]
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scores: npt.NDArray[np.float32]
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landmarks: npt.NDArray[np.float32]
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class DetectedFace(TypedDict):
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boundingBox: BoundingBox
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embedding: str
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score: float
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FacialRecognitionOutput = list[DetectedFace]
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class PipelineEntry(TypedDict):
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modelName: str
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options: dict[str, Any]
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PipelineRequest = dict[ModelTask, dict[ModelType, PipelineEntry]]
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class InferenceEntry(TypedDict):
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name: str
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task: ModelTask
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type: ModelType
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options: dict[str, Any]
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InferenceEntries = tuple[list[InferenceEntry], list[InferenceEntry]]
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InferenceResponse = dict[ModelTask | Literal["imageHeight"] | Literal["imageWidth"], Any]
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def has_profiling(obj: Any) -> TypeGuard[HasProfiling]:
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return hasattr(obj, "profiling") and isinstance(obj.profiling, dict)
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T = TypeVar("T")
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