Lizerui9926
2023-03-16 db12d1c1d8ddbce39fd702dbc9ec4bcfbcb2003a
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import pynini
from fun_text_processing.text_normalization.de.utils import get_abs_path
from fun_text_processing.text_normalization.en.graph_utils import DAMO_NOT_QUOTE, DAMO_SIGMA, GraphFst
from pynini.lib import pynutil
 
 
class OrdinalFst(GraphFst):
    """
    Finite state transducer for verbalizing roman numerals
        e.g. ordinal { integer: "vier" } } -> "vierter"
                                           -> "viertes" ...
 
    Args:
        deterministic: if True will provide a single transduction option,
            for False multiple transduction are generated (used for audio-based normalization)
    """
 
    def __init__(self, deterministic: bool = True):
        super().__init__(name="ordinal", kind="verbalize", deterministic=deterministic)
        graph_digit = pynini.string_file(get_abs_path("data/ordinals/digit.tsv")).invert()
        graph_ties = pynini.string_file(get_abs_path("data/ordinals/ties.tsv")).invert()
        graph_thousands = pynini.string_file(get_abs_path("data/ordinals/thousands.tsv")).invert()
 
        graph = pynutil.delete("integer: \"") + pynini.closure(DAMO_NOT_QUOTE, 1) + pynutil.delete("\"")
 
        suffixes = pynini.union("ten", "tem", "ter", "tes", "te")
        convert_rest = pynutil.insert(suffixes, weight=0.01)
        self.ordinal_stem = graph_digit | graph_ties | graph_thousands
 
        suffix = pynini.cdrewrite(
            pynini.closure(self.ordinal_stem, 0, 1) + convert_rest, "", "[EOS]", DAMO_SIGMA,
        ).optimize()
        self.graph = pynini.compose(graph, suffix)
        self.suffix = suffix
        delete_tokens = self.delete_tokens(self.graph)
        self.fst = delete_tokens.optimize()