Datasets:

ArXiv:
OpenOCR / openrec /modeling /decoders /__init__.py
dlxj
init
82de705
import torch.nn as nn
from importlib import import_module
__all__ = ['build_decoder']
class_to_module = {
'ABINetDecoder': '.abinet_decoder',
'ASTERDecoder': '.aster_decoder',
'CDistNetDecoder': '.cdistnet_decoder',
'CPPDDecoder': '.cppd_decoder',
'RCTCDecoder': '.rctc_decoder',
'CTCDecoder': '.ctc_decoder',
'DANDecoder': '.dan_decoder',
'IGTRDecoder': '.igtr_decoder',
'LISTERDecoder': '.lister_decoder',
'LPVDecoder': '.lpv_decoder',
'MGPDecoder': '.mgp_decoder',
'NRTRDecoder': '.nrtr_decoder',
'PARSeqDecoder': '.parseq_decoder',
'RobustScannerDecoder': '.robustscanner_decoder',
'SARDecoder': '.sar_decoder',
'SMTRDecoder': '.smtr_decoder',
'SMTRDecoderNumAttn': '.smtr_decoder_nattn',
'SRNDecoder': '.srn_decoder',
'VisionLANDecoder': '.visionlan_decoder',
'MATRNDecoder': '.matrn_decoder',
'CAMDecoder': '.cam_decoder',
'OTEDecoder': '.ote_decoder',
'BUSDecoder': '.bus_decoder',
'DptrParseq': '.dptr_parseq_clip_b_decoder',
'MDiffDecoder': '.mdiff_decoder',
}
def build_decoder(config):
module_name = config.pop('name')
# Check if the class is defined in current module (e.g., GTCDecoder)
if module_name in globals():
module_class = globals()[module_name]
else:
if module_name not in class_to_module:
raise ValueError(f'Unsupported decoder: {module_name}')
module_str = class_to_module[module_name]
# Dynamically import the module and get the class
module = import_module(module_str, package=__package__)
module_class = getattr(module, module_name)
return module_class(**config)
class GTCDecoder(nn.Module):
def __init__(self,
in_channels,
gtc_decoder,
ctc_decoder,
detach=True,
infer_gtc=False,
out_channels=0,
**kwargs):
super(GTCDecoder, self).__init__()
self.detach = detach
self.infer_gtc = infer_gtc
if infer_gtc:
gtc_decoder['out_channels'] = out_channels[0]
ctc_decoder['out_channels'] = out_channels[1]
gtc_decoder['in_channels'] = in_channels
ctc_decoder['in_channels'] = in_channels
self.gtc_decoder = build_decoder(gtc_decoder)
else:
ctc_decoder['in_channels'] = in_channels
ctc_decoder['out_channels'] = out_channels
self.ctc_decoder = build_decoder(ctc_decoder)
def forward(self, x, data=None):
ctc_pred = self.ctc_decoder(x.detach() if self.detach else x,
data=data)
if self.training or self.infer_gtc:
gtc_pred = self.gtc_decoder(x.flatten(2).transpose(1, 2),
data=data)
return {'gtc_pred': gtc_pred, 'ctc_pred': ctc_pred}
else:
return ctc_pred
class GTCDecoderTwo(nn.Module):
def __init__(self,
in_channels,
gtc_decoder,
ctc_decoder,
infer_gtc=False,
out_channels=0,
**kwargs):
super(GTCDecoderTwo, self).__init__()
self.infer_gtc = infer_gtc
gtc_decoder['out_channels'] = out_channels[0]
ctc_decoder['out_channels'] = out_channels[1]
gtc_decoder['in_channels'] = in_channels
ctc_decoder['in_channels'] = in_channels
self.gtc_decoder = build_decoder(gtc_decoder)
self.ctc_decoder = build_decoder(ctc_decoder)
def forward(self, x, data=None):
x_ctc, x_gtc = x
ctc_pred = self.ctc_decoder(x_ctc, data=data)
if self.training or self.infer_gtc:
gtc_pred = self.gtc_decoder(x_gtc.flatten(2).transpose(1, 2),
data=data)
return {'gtc_pred': gtc_pred, 'ctc_pred': ctc_pred}
else:
return ctc_pred