# Copyright 2022 The HuggingFace Team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import unittest from transformers import MODEL_FOR_DOCUMENT_QUESTION_ANSWERING_MAPPING, AutoTokenizer, is_vision_available from transformers.pipelines import pipeline from transformers.pipelines.document_question_answering import apply_tesseract from transformers.testing_utils import ( is_pipeline_test, nested_simplify, require_detectron2, require_pytesseract, require_tf, require_torch, require_vision, slow, ) from .test_pipelines_common import ANY if is_vision_available(): from PIL import Image from transformers.image_utils import load_image else: class Image: @staticmethod def open(*args, **kwargs): pass def load_image(_): return None # This is a pinned image from a specific revision of a document question answering space, hosted by HuggingFace, # so we can expect it to be available. INVOICE_URL = ( "https://huggingface.co/spaces/impira/docquery/resolve/2f6c96314dc84dfda62d40de9da55f2f5165d403/invoice.png" ) @is_pipeline_test @require_torch @require_vision class DocumentQuestionAnsweringPipelineTests(unittest.TestCase): model_mapping = MODEL_FOR_DOCUMENT_QUESTION_ANSWERING_MAPPING @require_pytesseract @require_vision def get_test_pipeline(self, model, tokenizer, processor): dqa_pipeline = pipeline( "document-question-answering", model=model, tokenizer=tokenizer, image_processor=processor ) image = INVOICE_URL word_boxes = list(zip(*apply_tesseract(load_image(image), None, ""))) question = "What is the placebo?" examples = [ { "image": load_image(image), "question": question, }, { "image": image, "question": question, }, { "image": image, "question": question, "word_boxes": word_boxes, }, ] return dqa_pipeline, examples def run_pipeline_test(self, dqa_pipeline, examples): outputs = dqa_pipeline(examples, top_k=2) self.assertEqual( outputs, [ [ {"score": ANY(float), "answer": ANY(str), "start": ANY(int), "end": ANY(int)}, {"score": ANY(float), "answer": ANY(str), "start": ANY(int), "end": ANY(int)}, ] ] * 3, ) @require_torch @require_detectron2 @require_pytesseract def test_small_model_pt(self): dqa_pipeline = pipeline("document-question-answering", model="hf-internal-testing/tiny-random-layoutlmv2") image = INVOICE_URL question = "How many cats are there?" expected_output = [ {"score": 0.0001, "answer": "oy 2312/2019", "start": 38, "end": 39}, {"score": 0.0001, "answer": "oy 2312/2019 DUE", "start": 38, "end": 40}, ] outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual(nested_simplify(outputs, decimals=4), expected_output) outputs = dqa_pipeline({"image": image, "question": question}, top_k=2) self.assertEqual(nested_simplify(outputs, decimals=4), expected_output) # This image does not detect ANY text in it, meaning layoutlmv2 should fail. # Empty answer probably image = "./tests/fixtures/tests_samples/COCO/000000039769.png" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual(outputs, []) # We can optionnally pass directly the words and bounding boxes image = "./tests/fixtures/tests_samples/COCO/000000039769.png" words = [] boxes = [] outputs = dqa_pipeline(image=image, question=question, words=words, boxes=boxes, top_k=2) self.assertEqual(outputs, []) # TODO: Enable this once hf-internal-testing/tiny-random-donut is implemented # @require_torch # def test_small_model_pt_donut(self): # dqa_pipeline = pipeline("document-question-answering", model="hf-internal-testing/tiny-random-donut") # # dqa_pipeline = pipeline("document-question-answering", model="../tiny-random-donut") # image = "https://templates.invoicehome.com/invoice-template-us-neat-750px.png" # question = "How many cats are there?" # # outputs = dqa_pipeline(image=image, question=question, top_k=2) # self.assertEqual( # nested_simplify(outputs, decimals=4), [{"score": 0.8799, "answer": "2"}, {"score": 0.296, "answer": "1"}] # ) @slow @require_torch @require_detectron2 @require_pytesseract def test_large_model_pt(self): dqa_pipeline = pipeline( "document-question-answering", model="tiennvcs/layoutlmv2-base-uncased-finetuned-docvqa", revision="9977165", ) image = INVOICE_URL question = "What is the invoice number?" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9944, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0009, "answer": "us-001", "start": 16, "end": 16}, ], ) outputs = dqa_pipeline({"image": image, "question": question}, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9944, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0009, "answer": "us-001", "start": 16, "end": 16}, ], ) outputs = dqa_pipeline( [{"image": image, "question": question}, {"image": image, "question": question}], top_k=2 ) self.assertEqual( nested_simplify(outputs, decimals=4), [ [ {"score": 0.9944, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0009, "answer": "us-001", "start": 16, "end": 16}, ], ] * 2, ) @slow @require_torch @require_detectron2 @require_pytesseract def test_large_model_pt_chunk(self): dqa_pipeline = pipeline( "document-question-answering", model="tiennvcs/layoutlmv2-base-uncased-finetuned-docvqa", revision="9977165", max_seq_len=50, ) image = INVOICE_URL question = "What is the invoice number?" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9974, "answer": "1110212019", "start": 23, "end": 23}, {"score": 0.9948, "answer": "us-001", "start": 16, "end": 16}, ], ) outputs = dqa_pipeline({"image": image, "question": question}, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9974, "answer": "1110212019", "start": 23, "end": 23}, {"score": 0.9948, "answer": "us-001", "start": 16, "end": 16}, ], ) outputs = dqa_pipeline( [{"image": image, "question": question}, {"image": image, "question": question}], top_k=2 ) self.assertEqual( nested_simplify(outputs, decimals=4), [ [ {"score": 0.9974, "answer": "1110212019", "start": 23, "end": 23}, {"score": 0.9948, "answer": "us-001", "start": 16, "end": 16}, ] ] * 2, ) @slow @require_torch @require_pytesseract @require_vision def test_large_model_pt_layoutlm(self): tokenizer = AutoTokenizer.from_pretrained( "impira/layoutlm-document-qa", revision="3dc6de3", add_prefix_space=True ) dqa_pipeline = pipeline( "document-question-answering", model="impira/layoutlm-document-qa", tokenizer=tokenizer, revision="3dc6de3", ) image = INVOICE_URL question = "What is the invoice number?" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.4251, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0819, "answer": "1110212019", "start": 23, "end": 23}, ], ) outputs = dqa_pipeline({"image": image, "question": question}, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.4251, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0819, "answer": "1110212019", "start": 23, "end": 23}, ], ) outputs = dqa_pipeline( [{"image": image, "question": question}, {"image": image, "question": question}], top_k=2 ) self.assertEqual( nested_simplify(outputs, decimals=4), [ [ {"score": 0.4251, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0819, "answer": "1110212019", "start": 23, "end": 23}, ] ] * 2, ) word_boxes = list(zip(*apply_tesseract(load_image(image), None, ""))) # This model should also work if `image` is set to None outputs = dqa_pipeline({"image": None, "word_boxes": word_boxes, "question": question}, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.4251, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.0819, "answer": "1110212019", "start": 23, "end": 23}, ], ) @slow @require_torch @require_pytesseract @require_vision def test_large_model_pt_layoutlm_chunk(self): tokenizer = AutoTokenizer.from_pretrained( "impira/layoutlm-document-qa", revision="3dc6de3", add_prefix_space=True ) dqa_pipeline = pipeline( "document-question-answering", model="impira/layoutlm-document-qa", tokenizer=tokenizer, revision="3dc6de3", max_seq_len=50, ) image = INVOICE_URL question = "What is the invoice number?" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9999, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.9998, "answer": "us-001", "start": 16, "end": 16}, ], ) outputs = dqa_pipeline( [{"image": image, "question": question}, {"image": image, "question": question}], top_k=2 ) self.assertEqual( nested_simplify(outputs, decimals=4), [ [ {"score": 0.9999, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.9998, "answer": "us-001", "start": 16, "end": 16}, ] ] * 2, ) word_boxes = list(zip(*apply_tesseract(load_image(image), None, ""))) # This model should also work if `image` is set to None outputs = dqa_pipeline({"image": None, "word_boxes": word_boxes, "question": question}, top_k=2) self.assertEqual( nested_simplify(outputs, decimals=4), [ {"score": 0.9999, "answer": "us-001", "start": 16, "end": 16}, {"score": 0.9998, "answer": "us-001", "start": 16, "end": 16}, ], ) @slow @require_torch def test_large_model_pt_donut(self): dqa_pipeline = pipeline( "document-question-answering", model="naver-clova-ix/donut-base-finetuned-docvqa", tokenizer=AutoTokenizer.from_pretrained("naver-clova-ix/donut-base-finetuned-docvqa"), feature_extractor="naver-clova-ix/donut-base-finetuned-docvqa", ) image = INVOICE_URL question = "What is the invoice number?" outputs = dqa_pipeline(image=image, question=question, top_k=2) self.assertEqual(nested_simplify(outputs, decimals=4), [{"answer": "us-001"}]) @require_tf @unittest.skip("Document question answering not implemented in TF") def test_small_model_tf(self): pass