TSmarizer / extractive_summarizer /sentence_handler.py
cagataydag's picture
Duplicate from Gladiator/Text-Summarizer
df82c16
raw
history blame
2.42 kB
from typing import List
from spacy.lang.en import English
class SentenceHandler(object):
def __init__(self, language=English):
"""
Base Sentence Handler with Spacy support.
:param language: Determines the language to use with spacy.
"""
self.nlp = language()
try:
# Supports spacy 2.0
self.nlp.add_pipe(self.nlp.create_pipe('sentencizer'))
self.is_spacy_3 = False
except Exception:
# Supports spacy 3.0
self.nlp.add_pipe("sentencizer")
self.is_spacy_3 = True
def sentence_processor(self, doc,
min_length: int = 40,
max_length: int = 600) -> List[str]:
"""
Processes a given spacy document and turns them into sentences.
:param doc: The document to use from spacy.
:param min_length: The minimum length a sentence should be to be considered.
:param max_length: The maximum length a sentence should be to be considered.
:return: Sentences.
"""
to_return = []
for c in doc.sents:
if max_length > len(c.text.strip()) > min_length:
if self.is_spacy_3:
to_return.append(c.text.strip())
else:
to_return.append(c.string.strip())
return to_return
def process(self, body: str,
min_length: int = 40,
max_length: int = 600) -> List[str]:
"""
Processes the content sentences.
:param body: The raw string body to process
:param min_length: Minimum length that the sentences must be
:param max_length: Max length that the sentences mus fall under
:return: Returns a list of sentences.
"""
doc = self.nlp(body)
return self.sentence_processor(doc, min_length, max_length)
def __call__(self, body: str,
min_length: int = 40,
max_length: int = 600) -> List[str]:
"""
Processes the content sentences.
:param body: The raw string body to process
:param min_length: Minimum length that the sentences must be
:param max_length: Max length that the sentences mus fall under
:return: Returns a list of sentences.
"""
return self.process(body, min_length, max_length)