Example #1
0
    def __init__(self, args, tgt_dict):
        super().__init__(args, tgt_dict)

        self.silence = (
            tgt_dict.index("<ctc_blank>")
            if "<ctc_blank>" in tgt_dict.indices
            else tgt_dict.bos()
        )
        self.lexicon = load_words(args.lexicon)
        self.word_dict = create_word_dict(self.lexicon)
        self.unk_word = self.word_dict.get_index("<unk>")

        self.lm = KenLM(args.kenlm_model, self.word_dict)
        self.trie = Trie(self.vocab_size, self.silence)

        start_state = self.lm.start(False)
        for i, (word, spellings) in enumerate(self.lexicon.items()):
            word_idx = self.word_dict.get_index(word)
            _, score = self.lm.score(start_state, word_idx)
            for spelling in spellings:
                spelling_idxs = [tgt_dict.index(token) for token in spelling]
                assert (
                    tgt_dict.unk() not in spelling_idxs
                ), f"{spelling} {spelling_idxs}"
                self.trie.insert(spelling_idxs, word_idx, score)
        self.trie.smear(SmearingMode.MAX)

        self.decoder_opts = DecoderOptions(
            args.beam,
            int(getattr(args, "beam_size_token", len(tgt_dict))),
            args.beam_threshold,
            args.lm_weight,
            args.word_score,
            args.unk_weight,
            args.sil_weight,
            0,
            False,
            self.criterion_type,
        )

        if self.asg_transitions is None:
            N = 768
            # self.asg_transitions = torch.FloatTensor(N, N).zero_()
            self.asg_transitions = []

        self.decoder = LexiconDecoder(
            self.decoder_opts,
            self.trie,
            self.lm,
            self.silence,
            self.blank,
            self.unk_word,
            self.asg_transitions,
            False,
        )
Example #2
0
    def __init__(self, args, tgt_dict):
        super().__init__(args, tgt_dict)

        self.silence = tgt_dict.index(args.silence_token)

        self.lexicon = load_words(args.lexicon)
        self.word_dict = create_word_dict(self.lexicon)
        self.unk_word = self.word_dict.get_index("<unk>")

        self.lm = KenLM(args.kenlm_model, self.word_dict)
        self.trie = Trie(self.vocab_size, self.silence)

        start_state = self.lm.start(False)
        for word, spellings in self.lexicon.items():
            word_idx = self.word_dict.get_index(word)
            _, score = self.lm.score(start_state, word_idx)
            for spelling in spellings:
                spelling_idxs = [tgt_dict.index(token) for token in spelling]
                self.trie.insert(spelling_idxs, word_idx, score)
        self.trie.smear(SmearingMode.MAX)

        self.decoder_opts = DecoderOptions(
            args.beam,
            args.beam_threshold,
            args.lm_weight,
            args.word_score,
            args.unk_weight,
            False,
            args.sil_weight,
            self.criterion_type,
        )

        self.decoder = WordLMDecoder(
            self.decoder_opts,
            self.trie,
            self.lm,
            self.silence,
            self.blank,
            self.unk_word,
            self.asg_transitions,
        )
    def __init__(self,
                 lm_weight=2.0,
                 lexicon_path="WER_data/lexicon.txt",
                 token_path="WER_data/letters.lst",
                 lm_path="WER_data/4-gram.bin"):
        lexicon = load_words(lexicon_path)
        word_dict = create_word_dict(lexicon)

        self.token_dict = Dictionary(token_path)
        self.lm = KenLM(lm_path, word_dict)

        self.sil_idx = self.token_dict.get_index("|")
        self.unk_idx = word_dict.get_index("<unk>")
        self.token_dict.add_entry("#")
        self.blank_idx = self.token_dict.get_index('#')

        self.trie = Trie(self.token_dict.index_size(), self.sil_idx)
        start_state = self.lm.start(start_with_nothing=False)

        for word, spellings in lexicon.items():
            usr_idx = word_dict.get_index(word)
            _, score = self.lm.score(start_state, usr_idx)
            for spelling in spellings:
                # max_reps should be 1; using 0 here to match DecoderTest bug
                spelling_idxs = tkn_to_idx(spelling,
                                           self.token_dict,
                                           max_reps=0)
                self.trie.insert(spelling_idxs, usr_idx, score)

        self.trie.smear(SmearingMode.MAX)
        self.opts = DecoderOptions(beam_size=2500,
                                   beam_threshold=100.0,
                                   lm_weight=lm_weight,
                                   word_score=2.0,
                                   unk_score=-math.inf,
                                   log_add=False,
                                   sil_weight=-1,
                                   criterion_type=CriterionType.CTC)
Example #4
0
    data_path = sys.argv[1]

    # load test files
    # load time and number of tokens for dumped acoustic scores
    T, N = load_tn(os.path.join(data_path, "TN.bin"))
    # load emissions [Batch=1, Time, Ntokens]
    emissions = load_emissions(os.path.join(data_path, "emission.bin"))
    # load transitions (from ASG loss optimization) [Ntokens, Ntokens]
    transitions = load_transitions(os.path.join(data_path, "transition.bin"))
    # load lexicon file, which defines spelling of words
    # the format word and its tokens spelling separated by the spaces,
    # for example for letters tokens with ASG loss:
    # ann a n 1 |
    lexicon = load_words(os.path.join(data_path, "words.lst"))
    # read lexicon and store it in the w2l dictionary
    word_dict = create_word_dict(lexicon)
    # create w2l dict with tokens set (letters in this example)
    token_dict = Dictionary(os.path.join(data_path, "letters.lst"))
    # add repetition symbol as soon as we have ASG acoustic model
    token_dict.add_entry("1")
    # create Kenlm language model
    lm = KenLM(os.path.join(data_path, "lm.arpa"), word_dict)

    # test LM
    sentence = ["the", "cat", "sat", "on", "the", "mat"]
    # start LM with nothing, get its current state
    lm_state = lm.start(False)
    total_score = 0
    lm_score_target = [
        -1.05971, -4.19448, -3.33383, -2.76726, -1.16237, -4.64589
    ]