This is an im2latex composite model that recognizes latex formulas.
The model uses vocabulary file vocab.json
to predict sequence of latex tokens.
The model is built on the ResNeXt-50 backbone with additional attention-based text recognition head.
The model was trained on internal Intel's dataset containing images of handwritten polynomial equations.
The equations consist of tokens from the corresponding to this model vocabulary file.
Vocabulary file is located under corresponding model configuration directory, <models_dir>/models/intel/formula-recognition-polynomials-handwritten-0001/formula-recognition-polynomials-handwritten-0001-decoder/vocab.json
. Model can predict letters, numbers and upperscript.
- 4 . 6 c ^ { 2 } d ^ { - 6 0 }
Metric | Value |
---|---|
im2latex_polynomials_handwritten dataset, im2latex-match-images metric | 70.5% |
Source framework | PyTorch* |
Im2latex-match-images metric is calculated by <omz_dir>/tools/accuracy_checker/accuracy_checker/metrics/im2latex_images_match.py
The formula-recognition-polynomials-handwritten-0001-encoder model is a ResNeXt-50 like backbone with some initialization layers for decoder
Metric | Value |
---|---|
GFlops | 12.8447 |
MParams | 8.6838 |
Image, name: imgs
, shape: 1, 3, 96, 990
in the 1, C, H, W
format, where:
C
- number of channelsH
- image heightW
- image width
The expected channel order is BGR
.
- Name:
hidden
, shape:1, 512
. Initial context state of the LSTM cell. - Name:
context
, shape:1, 512
. Initial hidden state of the LSTM cell. - Name:
init_0
, shape:1, 256
. Initial state of the decoder. - Name:
row_enc_out
, shape:1, 6, 62, 512
. Features from encoder that are fed to a decoder.
The formula-recognition-polynomials-handwritten-0001-decoder model is an LSTM based decoder with attention module.
Metric | Value |
---|---|
GFlops | 0.2017 |
MParams | 2.5449 |
- Name:
dec_st_c
, shape:1, 512
. Current context state of the LSTM cell. - Name:
dec_st_h
, shape:1, 512
. Current hidden state of the LSTM cell. - Name:
output_prev
, shape:1, 256
. Current state of the decoder. - Name:
row_enc_out
, shape:1, 6, 62, 512
. Encoded features. - Name:
tgt
, shape:1, 1
. Index of the previous symbol.
- Name:
dec_st_c
, shape:1, 512
. Current context state of the LSTM cell. - Name:
dec_st_h
, shape:1, 512
. Current hidden state of the LSTM cell. - Name:
output
, shape:1, 256
. Current state of the decoder. - Name:
logit
, shape:1, N
, whereN
is a vocabulary size. Classification confidence scores in the [0, 1] range for every token.
The model can be used in the following demos provided by the Open Model Zoo to show its capabilities:
[*] Other names and brands may be claimed as the property of others.