import spacy from ASL_gloss_functions import process_sentence ## custom class for translation """ set of rules for ASL conversion: 1. Uppercase Letters: Write each ASL sign in uppercase letters 2. Non-Manual Signals (NMS): Indicate non-manual signals such as facial expressions or body movements above the glossed sign. 3. Fingerspelling: Represent fingerspelled words with dashes between each letter. 4. Lexicalized Fingerspelling: Indicate lexicalized fingerspelling with a # symbol. 5. Repetition: Show repeated signs with a plus sign (+) after the gloss. 6. Role Shift: Indicate role shift with "rs" before the gloss. 7. Indexing/Pointing: Use "ix" followed by a subscript letter or number for indexing. 8. Directional Signs: Indicate the direction of the sign with arrows or other indicators. 9. Classifiers: Use abbreviations for classifiers. 10. Time Indicators: Place time indicators at the beginning of the sentence. 11. Topic-Comment Structure: Indicate the topic followed by the comment. 12. English Words/Concepts: Use English gloss in quotation marks for concepts without direct ASL equivalents. """ ## reference language nlp = spacy.load("en_core_web_sm") class NlpSpacyBaseTranslator(): def __init__(self, sentence): self.sentence = sentence def translate_to_gloss(self): """ - doc: after nlp processing: I write a sentence for testing Today 17.05 p.m. - gloss: TODAY - generated_gloss: TODAY ix_1 I WRITE SENTENCE FOR TEST 17.05 P.M. """ print(f'self.sentence: {self.sentence}') doc = nlp(self.sentence) ##print(f'doc after nlp processing: {doc}') generated_gloss = process_sentence(doc) ## deterministic model = set of ASL-Gloss-rules functions print(f'generated_gloss: {generated_gloss}') return generated_gloss