- Update 2021: more robust model, faster dataloader, Python3 only
- Update 2020: code is compatible with TF2
Handwritten Text Recognition (HTR) system implemented with TensorFlow (TF) and trained on the IAM off-line HTR dataset. This Neural Network (NN) model recognizes the text contained in the images of segmented words as shown in the illustration below. 3/4 of the words from the validation-set are correctly recognized, and the character error rate is around 10%.
Download the model trained on the IAM dataset.
Put the contents of the downloaded file model.zip
into the model
directory of the repository.
Afterwards, go to the src
directory and run python main.py
.
The input image and the expected output is shown below.
> python main.py
Init with stored values from ../model/snapshot-39
Recognized: "Hello"
Probability: 0.42098119854927063
--train
: train the NN on 95% of the dataset samples and validate on the remaining 5%--validate
: validate the trained NN--decoder
: select from CTC decoders "bestpath", "beamsearch", and "wordbeamsearch". Defaults to "bestpath". For option "wordbeamsearch" see details below--batch_size
: batch size--data_dir
: directory containing IAM dataset (with subdirectoriesimg
andgt
)--fast
: use LMDB to load images (faster than loading image files from disk)--dump
: dumps the output of the NN to CSV file(s) saved in thedump
folder. Can be used as input for the CTCDecoder
If neither --train
nor --validate
is specified, the NN infers the text from the test image (data/test.png
).
It is possible to use the word beam search decoder [4] instead of the two decoders shipped with TF. Words are constrained to those contained in a dictionary, but arbitrary non-word character strings (numbers, punctuation marks) can still be recognized. The following illustration shows a sample for which word beam search is able to recognize the correct text, while the other decoders fail.
Follow these instructions to integrate word beam search decoding:
- Clone repository CTCWordBeamSearch
- Compile custom TF operation (follow instructions given in README)
- Copy binary
TFWordBeamSearch.so
from the CTCWordBeamSearch repository to thesrc
directory of the SimpleHTR repository
Word beam search can now be enabled by setting the corresponding command line argument.
The dictionary is created (in training and validation mode) by using all words contained in the IAM dataset (i.e. also including words from validation set) and is saved into the file data/corpus.txt
.
Further, the (manually created) list of word-characters can be found in the file model/wordCharList.txt
.
Beam width is set to 50 to conform with the beam width of vanilla beam search decoding.
Follow these instructions to get the IAM dataset [5]:
- Register for free at this website
- Download
words/words.tgz
- Download
ascii/words.txt
- Create a directory for the dataset on your disk, and create two subdirectories:
img
andgt
- Put
words.txt
into thegt
directory - Put the content (directories
a01
,a02
, ...) ofwords.tgz
into theimg
directory
- Delete files from
model
directory if you want to train from scratch - Go to the
src
directory and executepython main.py --train --data_dir path/to/IAM
- Training stops after a fixed number of epochs without improvement
Loading and decoding the png image files from the disk is the bottleneck even when using only a small GPU. The database LMDB is used to speed up image loading:
- Go to the
src
directory and runcreateLMDB.py --data_dir path/to/IAM
with the IAM data directory specified - A subfolder
lmdb
is created in the IAM data directory containing the LMDB files - When training the model, add the command line option
--fast
Using the --fast
option and a GTX 1050 Ti training takes around 3h with a batch size of 500.
The model [1] is a stripped-down version of the HTR system I implemented for my thesis [2][3]. What remains is what I think is the bare minimum to recognize text with an acceptable accuracy. It consists of 5 CNN layers, 2 RNN (LSTM) layers and the CTC loss and decoding layer. The illustration below gives an overview of the NN (green: operations, pink: data flowing through NN) and here follows a short description:
- The input image is a gray-value image and has a size of 128x32
- 5 CNN layers map the input image to a feature sequence of size 32x256
- 2 LSTM layers with 256 units propagate information through the sequence and map the sequence to a matrix of size 32x80. Each matrix-element represents a score for one of the 80 characters at one of the 32 time-steps
- The CTC layer either calculates the loss value given the matrix and the ground-truth text (when training), or it decodes the matrix to the final text with best path decoding or beam search decoding (when inferring)
Run python analyze.py
with the following arguments to analyze the image file data/analyze.png
with the ground-truth text "are":
--relevance
: compute the pixel relevance for the correct prediction--invariance
: check if the model is invariant to horizontal translations of the text- No argument provided: show the results
Results are shown in the plots below. For more information see this article.
- I get the error message "... TFWordBeamSearch.so: cannot open shared object file: No such file or directory": if you want to use word beam search decoding, you have to compile the custom TF operation from source
- Where can I find the file
words.txt
of the IAM dataset: it is located in the subfolderascii
on the IAM website - I want to recognize text of line (or sentence) images: this is not possible with the provided model. The size of the input image is too small. For more information read this article or have a look at the lamhoangtung/LineHTR repository
- I get an error when running the script more than once from an interactive Python session: do not call function
main()
in filemain.py
from an interactive session, as the TF computation graph is created multiple times when callingmain()
multiple times. Run the script by executingpython main.py
instead
[1] Build a Handwritten Text Recognition System using TensorFlow
[2] Scheidl - Handwritten Text Recognition in Historical Documents
[4] Scheidl - Word Beam Search: A Connectionist Temporal Classification Decoding Algorithm
[5] Marti - The IAM-database: an English sentence database for offline handwriting recognition