source: other-projects/maori-lang-detection/src/org/greenstone/atea/TextLanguageDetector.java@ 33651

Last change on this file since 33651 was 33651, checked in by ak19, 4 years ago
  1. Bugfix: overlappingSentences works. 2. storing numSentencesInMaor
File size: 16.5 KB
Line 
1/**
2 * Class that uses OpenNLP with the Language Detection Model to determine, with a default
3 * or configurable level of confidence, whether text (from a file or stdin) is in a given
4 * language or not.
5 * Internal functions can be used for detecting any of the 103 languages currently supported by
6 * the OpenNLP Language Detection Model.
7 *
8 * http://opennlp.apache.org/news/model-langdetect-183.html
9 * language detector model: http://opennlp.apache.org/models.html
10 * Pre-trained models for OpenNLP 1.5: http://opennlp.sourceforge.net/models-1.5/
11 * Use of Apache OpenNLP in general:
12 * http://opennlp.apache.org/docs/1.9.1/manual/opennlp.html#intro.api
13 * Use of OpenNLP for language detection:
14 * http://opennlp.apache.org/docs/1.9.1/manual/opennlp.html#tools.langdetect
15 *
16 * This code was based on the information and sample code at the above links and the links dispersed throughout this file.
17 * See also the accompanying README file.
18 *
19 * July 2019
20 */
21
22package org.greenstone.atea;
23
24import java.io.*;
25import opennlp.tools.langdetect.*;
26import opennlp.tools.sentdetect.*;
27import opennlp.tools.util.*;
28
29import java.util.ArrayList;
30
31/**
32 * EXPORT OPENNLP_HOME environment variable to be your apache OpenNLP installation.
33 * Create a folder called "models" within the $OPENNLP_HOME folder, and put the file "langdetect-183.bin" in there
34 * (which is the language detection model zipped up and renamed to .bin extension).
35 *
36 * Then, to compile this program, do the following from the "src" folder (the folder containing this java file):
37 * maori-lang-detection/src$ javac -cp ".:$OPENNLP_HOME/lib/opennlp-tools-1.9.1.jar" org/greenstone/atea/TextLanguageDetector.java
38 *
39 * Only the subclass MaoriTextDetector.java has a main method at present that can be run.
40 *
41 */
42public class TextLanguageDetector {
43
44 public static final double DEFAULT_MINIMUM_CONFIDENCE = 0.50;
45
46 /**
47 * Configurable: cut off minimum confidence value,
48 * greater or equal to which determines that the best predicted language is
49 * acceptable to user of TextLanguageDetector.
50 */
51 public final double MINIMUM_CONFIDENCE;
52
53 /** silentMode set to false means TextLanguageDetector won't print helpful messages while running. Set to true to run silently. */
54 public final boolean silentMode;
55
56 private final String OPENNLP_MODELS_RELATIVE_PATH = "models" + File.separator;
57
58 /** Language Detection Model file for OpenNLP is expected to be at $OPENNLP_HOME/models/langdetect-183.bin */
59 private final String LANG_DETECT_MODEL_RELATIVE_PATH = OPENNLP_MODELS_RELATIVE_PATH + "langdetect-183.bin";
60
61 /**
62 * The LanguageDetectorModel object that will do the actual language detection/prediction for us.
63 * Created once in the constructor, can be used as often as needed thereafter.
64 */
65 private LanguageDetector myCategorizer = null;
66
67 /**
68 * The Sentence Detection object that does the sentence splitting for the language
69 * the sentece model was trained for.
70 */
71 private SentenceDetectorME sentenceDetector = null;
72
73
74 /** Constructor with default confidence for language detection.
75 * Does not create sentence model, just the language detection model.
76 */
77 public TextLanguageDetector(boolean silentMode) throws Exception {
78 this(silentMode, DEFAULT_MINIMUM_CONFIDENCE);
79 }
80
81 /** Constructor with configurable min_confidence for language detection
82 * Does not create sentence model, just the language detection model.
83 */
84 public TextLanguageDetector(boolean silentMode, double min_confidence) throws Exception {
85 this.silentMode = silentMode;
86 this.MINIMUM_CONFIDENCE = min_confidence;
87
88 // 1. Check we can find the Language Detect Model file in the correct location (check that $OPENNLP_HOME/models/langdetect-183.bin exists);
89 String langDetectModelPath = System.getenv("OPENNLP_HOME");
90 if(System.getenv("OPENNLP_HOME") == null) {
91 throw new Exception("\n\t*** Environment variable OPENNLP_HOME must be set to your Apache OpenNLP installation folder.");
92 }
93 langDetectModelPath = langDetectModelPath + File.separator + LANG_DETECT_MODEL_RELATIVE_PATH;
94 File langDetectModelBinFile = new File(langDetectModelPath);
95 if(!langDetectModelBinFile.exists()) {
96 throw new Exception("\n\t*** " + langDetectModelBinFile.getPath() + " doesn't exist."
97 + "\n\t*** Ensure the $OPENNLP_HOME folder contains a 'models' folder"
98 + "\n\t*** with the model file 'langdetect-183.bin' in it.");
99 }
100
101
102 // 2. Set up our language detector Model and the Categorizer for language predictions based on the Model.
103 // http://opennlp.apache.org/docs/1.9.1/manual/opennlp.html#intro.api
104 // https://docs.oracle.com/javase/tutorial/essential/exceptions/tryResourceClose.html
105 try (InputStream modelIn = new FileInputStream(langDetectModelPath)) {
106
107 LanguageDetectorModel model = new LanguageDetectorModel(modelIn);
108
109 // http://opennlp.apache.org/docs/1.9.1/manual/opennlp.html#tools.langdetect
110 this.myCategorizer = new LanguageDetectorME(model);
111 }/*catch(Exception e) {
112 e.printStackTrace();
113 }*/
114
115 // instantiating function should handle critical exceptions. Constructors shouldn't.
116
117 }
118
119 /** More general constructor that additionally can load up the sentence detector model
120 * for other languages, as long as the provided trained sentence model .bin file exists
121 * in the OPENNLP_MODELS_RELATIVE_PATH folder. */
122 public TextLanguageDetector(boolean silentMode, double min_confidence,
123 String sentenceModelFileName) throws Exception
124 {
125 this(silentMode, min_confidence);
126
127 // 3. Set up our sentence model and SentenceDetector object
128 String sentenceModelPath = System.getenv("OPENNLP_HOME") + File.separator
129 + OPENNLP_MODELS_RELATIVE_PATH + sentenceModelFileName; // "mri-sent_trained.bin" default
130 File sentenceModelBinFile = new File(sentenceModelPath);
131 if(!sentenceModelBinFile.exists()) {
132 throw new Exception("\n\t*** " + sentenceModelBinFile.getPath() + " doesn't exist."
133 + "\n\t*** Ensure the $OPENNLP_HOME folder contains a 'models' folder"
134 + "\n\t*** with the model file "+sentenceModelFileName+" in it.");
135 }
136 try (InputStream modelIn = new FileInputStream(sentenceModelPath)) {
137 // https://www.tutorialspoint.com/opennlp/opennlp_sentence_detection.htm
138 SentenceModel sentenceModel = new SentenceModel(modelIn);
139 this.sentenceDetector = new SentenceDetectorME(sentenceModel);
140
141 } // instantiating function should handle this critical exception
142 }
143
144 /** TODO: Is it sensible to use the Maori Language Sentence Model to split the text
145 * into sentences? What if the text in any other language or a mix of languages?
146 * Doesn't this assume that all languages split sentences alike? */
147 public String[] getAllSentences(String text) {
148
149 // This function doesn't work if the sentenceDetector object wasn't set up
150 if(sentenceDetector == null) return null;
151
152 String[] sentences = sentenceDetector.sentDetect(text);
153 return sentences;
154 }
155
156 public ArrayList<SentenceInfo> getAllSentencesInfo(String[] sentences) {
157
158 if(sentences == null) {
159 return null;
160 }
161
162 ArrayList<SentenceInfo> sentencesList = new ArrayList<SentenceInfo>();
163 for(int i = 0; i < sentences.length; i++) {
164 String sentence = sentences[i];
165
166 //System.err.println(sentence);
167
168 Language bestLanguage = myCategorizer.predictLanguage(sentence);
169 double confidence = bestLanguage.getConfidence();
170
171 sentencesList.add(new SentenceInfo(confidence, bestLanguage.getLang(), sentence));
172 }
173
174 return sentencesList;
175 }
176
177 public ArrayList<SentenceInfo> getAllOverlappingSentencesInfo(String[] sentences) {
178
179 if(sentences == null) {
180 return null;
181 }
182
183 ArrayList<SentenceInfo> sentencesList = new ArrayList<SentenceInfo>();
184 for(int i = 1; i < sentences.length; i++) {
185 // glue every two adjacent sentences together
186 String doubleSentence = sentences[i-1];
187
188 String separator = ". ";
189 // if the sentence already ends with a terminating punctuation character,
190 // then separator is just a space
191 doubleSentence = doubleSentence.trim();
192 if(doubleSentence.endsWith(".") || doubleSentence.endsWith("?") || doubleSentence.endsWith("!")) {
193 separator = " ";
194 }
195 doubleSentence = doubleSentence + separator + sentences[i];
196
197 //System.err.println(sentence);
198
199 Language bestLanguage = myCategorizer.predictLanguage(doubleSentence);
200 double confidence = bestLanguage.getConfidence();
201
202 sentencesList.add(new SentenceInfo(confidence, bestLanguage.getLang(), doubleSentence));
203 }
204
205 return sentencesList;
206 }
207
208 /**
209 * In this class' constructor, need to have set up the Sentence Detection Model
210 * for the langCode passed in to this function in order for the output to make
211 * sense for that language.
212 * Function that takes a text and returns those sentences in the requested language.
213 * @param text: the string of text from which sentences in the requested
214 * language are to be identified and returned.
215 * @param langCode: 3 letter code of requested language
216 * @param confidenceCutoff: minimum confidence for a SINGLE sentence to be selected
217 * even if the language detector determined the requested language as the primary one
218 * for that sentence. The confidence cutoff provides an additional check.
219 * @return null if no Sentence Detection Model set up in constructor
220 * else returns an ArrayList where:
221 * - the first element is the total number of sentences in the text parameter
222 * - remaining elements are the sentences in the text parameter that were in the
223 * requested language.
224 */
225 public ArrayList<String> getAllSentencesInLanguage(String langCode, String text, double confidenceCutoff)
226 {
227 // big assumption here: that we can split incoming text into sentences
228 // for any language using the sentence model trained for a given language (that of
229 // langCode), despite not knowing what language each sentence in the text param are in.
230 // Hinges on sentence detection in langCode being similar to all others?
231
232
233 // This function doesn't work if the sentenceDetector object wasn't set up
234 if(sentenceDetector == null) return null;
235
236 // we'll be storing just those sentences in text that are in the denoted language code
237 ArrayList<String> sentencesInLang = new ArrayList<String>();
238 // OpenNLP language detection works best with a minimum of 2 sentences
239 // See https://opennlp.apache.org/news/model-langdetect-183.html
240 // "It is important to note that this model is trained for and works well with
241 // longer texts that have at least 2 sentences or more from the same language."
242
243 // For evaluating single languages, I used a very small data set and found that
244 // if the primary language detected is MRI AND if the confidence is >= 0.1, the
245 // results appear reasonably to be in te reo Māori.
246
247 String[] sentences = sentenceDetector.sentDetect(text);
248 if(sentences == null) {
249 sentencesInLang.add("0"); // to indicate 0 sentences in requested language
250 return sentencesInLang;
251 }
252
253 // add in first element: how many sentences there were in text.
254 sentencesInLang.add(Integer.toString(sentences.length));
255
256 for(int i = 0; i < sentences.length; i++) {
257 String sentence = sentences[i];
258
259 //System.err.println(sentence);
260
261 Language bestLanguage = myCategorizer.predictLanguage(sentence);
262 double confidence = bestLanguage.getConfidence();
263
264 if(bestLanguage.getLang().equals(langCode) && confidence >= confidenceCutoff) {
265 //System.err.println("Adding sentence: " + sentence + "\n");
266 sentencesInLang.add(sentence);
267 } //else {
268 //System.err.println("SKIPPING sentence: " + sentence + "\n");
269 //}
270 }
271 return sentencesInLang;
272 }
273
274
275 /** @param langCode is 3 letter language code, ISO 639-2/3
276 * https://www.loc.gov/standards/iso639-2/php/code_list.php
277 * https://en.wikipedia.org/wiki/ISO_639-3
278 * @return true if the input text is Maori (mri) with MINIMUM_CONFIDENCE levels of confidence (if set,
279 * else DEFAULT_MINIMUM_CONFIDENCE levels of confidence).
280 */
281 public boolean isTextInLanguage(String langCode, String text) {
282 // Get the most probable language
283 Language bestLanguage = myCategorizer.predictLanguage(text);
284 doPrint("Best language: " + bestLanguage.getLang());
285 doPrint("Best language confidence: " + bestLanguage.getConfidence());
286
287 return (bestLanguage.getLang().equals(langCode) && bestLanguage.getConfidence() >= this.MINIMUM_CONFIDENCE);
288 }
289
290
291 /**
292 * Handle "smaller" textfiles/streams of text read in.
293 * Return value is the same as for isTextInLanguage(String langCode, String text);
294 */
295 public boolean isTextInLanguage(String langCode, BufferedReader reader) throws Exception {
296 // https://stackoverflow.com/questions/326390/how-do-i-create-a-java-string-from-the-contents-of-a-file
297
298 StringBuilder text = new StringBuilder();
299 String line = null;
300
301
302 while((line = reader.readLine()) != null) { // readLine removes newline separator
303 text.append(line + "\n"); // add back (unix style) line ending
304 }
305 return isTextInLanguage(langCode, text.toString());
306 }
307
308
309 /**
310 * Rudimentary attempt to deal with very large files.
311 * Return value is the same as for isTextInLanguage(String langCode, String text);
312 */
313 public boolean isLargeTextInLanguage(String langCode, BufferedReader reader) throws Exception {
314 // https://stackoverflow.com/questions/326390/how-do-i-create-a-java-string-from-the-contents-of-a-file
315
316 final int NUM_LINES = 100; // arbitrary 100 lines read, predict language, calculate confidence
317
318 StringBuilder text = new StringBuilder();
319 String line = null;
320
321 double cumulativeConfidence = 0;
322 int numLoops = 0;
323
324 int i = 0;
325 String language = null;
326
327 while((line = reader.readLine()) != null) { // readLine removes newline separator
328 text.append(line + "\n"); // add back (unix style) line ending
329
330 i++; // read nth line of numLoop
331
332
333 if(i == NUM_LINES) { // arbitrary 100 lines read, predict language, calculate confidence
334
335 Language bestLanguage = myCategorizer.predictLanguage(text.toString());
336 if(language != null && !bestLanguage.getLang().equals(language)) { // predicted lang of current n lines not the same as predicted lang for prev n lines
337 doPrintErr("**** WARNING: text seems to contain content in multiple languages or unable to consistently predict the same language.");
338 }
339 language = bestLanguage.getLang();
340 cumulativeConfidence += bestLanguage.getConfidence();
341
342 doPrintErr("Best predicted language for last " + NUM_LINES + " lines: " + language + "(confidence: " + bestLanguage.getConfidence() + ")");
343
344 // finished analysing language of NUM_LINES of text
345 text = new StringBuilder();
346 i = 0;
347 numLoops++;
348 }
349 }
350
351 // process any (remaining) text that was less than n NUM_LINES
352 if(!text.toString().equals("")) {
353 text.append(line + "\n"); // add back (unix style) line ending
354 i++;
355
356 Language bestLanguage = myCategorizer.predictLanguage(text.toString());
357
358 if(language != null && !bestLanguage.getLang().equals(language)) { // predicted lang of current n lines not the same as predicted lang for prev n lines
359 doPrintErr("**** WARNING: text seems to contain content in multiple languages or unable to consistently predict the same language.");
360 }
361 language = bestLanguage.getLang();
362 cumulativeConfidence += bestLanguage.getConfidence();
363 doPrintErr("Best predicted language for final " + NUM_LINES + " lines: " + language + "(confidence: " + bestLanguage.getConfidence() + ")");
364 }
365
366
367 int totalLinesRead = numLoops * NUM_LINES + i; // not used
368 double avgConfidence = cumulativeConfidence/(numLoops + 1); // not quite the average as the text processed outside the loop may have fewer lines than NUM_LINES
369
370
371 return (language.equals(langCode) && avgConfidence >= this.MINIMUM_CONFIDENCE);
372 }
373
374
375 /**
376 * Prints to STDOUT the predicted languages of the input text in order of descending confidence.
377 * UNUSED.
378 */
379 public void predictedLanguages(String text) {
380 // Get an array with the most probable languages
381
382 Language[] languages = myCategorizer.predictLanguages(text);
383
384 if(languages == null || languages.length <= 0) {
385 doPrintErr("No languages predicted for the input text");
386 } else {
387 for(int i = 0; i < languages.length; i++) {
388 doPrint("Language prediction " + i + ": " + languages[i]);
389 }
390 }
391
392 }
393
394 public void doPrint(String msg) {
395 if(!this.silentMode) System.out.println(msg);
396 }
397 public void doPrintErr(String msg) {
398 if(!this.silentMode) System.err.println(msg);
399 }
400
401}
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