# coding: utf-8 import os from pix2text import TextFormulaOCR, merge_line_texts def test_mfd(): config = dict() model = TextFormulaOCR.from_config(config) res = model.recognize( './docs/examples/zh1.jpg', save_analysis_res='./analysis_res.jpg', ) print(res) def test_example(): # img_fp = './docs/examples/formula.jpg' img_fp = './docs/examples/mixed.jpg' formula_config = { 'model_name': 'mfr-pro', 'model_backend': 'onnx', } p2t = TextFormulaOCR.from_config(total_configs={'formula': formula_config}) print(p2t.recognize(img_fp)) # print(p2t.recognize_formula(img_fp)) # outs = p2t(img_fp, resized_shape=608, save_analysis_res='./analysis_res.jpg') # can also use `p2t.recognize(img_fp)` # print(outs) # # To get just the text contents, use: # only_text = merge_line_texts(outs, auto_line_break=True) # print(only_text) def test_blog_example(): img_fp = './docs/examples/mixed.jpg' total_config = dict( mfd=dict( # 声明 MFD 的初始化参数 model_path=os.path.expanduser( '~/.pix2text/1.1/mfd-onnx/mfd-v20240618.onnx' ), # 注:修改成你的模型文件所存储的路径 ), formula=dict( model_name='mfr-pro', model_backend='onnx', model_dir=os.path.expanduser( '~/.pix2text/1.1/mfr-pro-onnx' ), # 注:修改成你的模型文件所存储的路径 ), ) p2t = TextFormulaOCR.from_config(total_configs=total_config) outs = p2t.recognize( img_fp, resized_shape=608, return_text=False ) # 也可以使用 `p2t(img_fp)` 获得相同的结果 print(outs) # 如果只需要识别出的文字和Latex表示,可以使用下面行的代码合并所有结果 only_text = merge_line_texts(outs, auto_line_break=True) print(only_text) def test_blog_pro_example(): img_fp = './docs/examples/mixed.jpg' total_config = dict( languages=('en', 'ch_sim'), mfd=dict( # 声明 MFD 的初始化参数 model_path=os.path.expanduser( '~/.pix2text/1.1/mfd-onnx/mfd-v20240618.onnx' ), # 注:修改成你的模型文件所存储的路径 ), formula=dict( model_name='mfr-pro', model_backend='onnx', model_dir=os.path.expanduser( '~/.pix2text/1.1/mfr-pro-onnx' ), # 注:修改成你的模型文件所存储的路径 ), text=dict( rec_model_name='doc-densenet_lite_666-gru_large', rec_model_backend='onnx', rec_model_fp=os.path.expanduser( '~/.cnocr/2.3/doc-densenet_lite_666-gru_large/cnocr-v2.3-doc-densenet_lite_666-gru_large-epoch=005-ft-model.onnx' # noqa ), # 注:修改成你的模型文件所存储的路径 ), ) p2t = TextFormulaOCR.from_config(total_configs=total_config) outs = p2t.recognize( img_fp, resized_shape=608, return_text=False ) # 也可以使用 `p2t(img_fp)` 获得相同的结果 print(outs) # 如果只需要识别出的文字和Latex表示,可以使用下面行的代码合并所有结果 only_text = merge_line_texts(outs, auto_line_break=True) print(only_text) def test_example_mixed(): img_fp = './docs/examples/en1.jpg' p2t = TextFormulaOCR.from_config() outs = p2t.recognize( img_fp, resized_shape=608, return_text=False ) # 也可以使用 `p2t(img_fp)` 获得相同的结果 print(outs) # 如果只需要识别出的文字和Latex表示,可以使用下面行的代码合并所有结果 only_text = merge_line_texts(outs, auto_line_break=True) print(only_text) def test_example_formula(): img_fp = './docs/examples/math-formula-42.png' p2t = TextFormulaOCR.from_config() outs = p2t.recognize_formula(img_fp) print(outs) def test_example_text(): img_fp = './docs/examples/general.jpg' p2t = TextFormulaOCR() outs = p2t.recognize_text(img_fp) print(outs)