A Number Recognition algorithm

Overview

Paddle-VisualAttention

Results_Compared

SVHN Dataset

Methods Steps GPU Batch Size Learning Rate Patience Decay Step Decay Rate Training Speed (FPS) Accuracy
PaddlePaddle_SVHNClassifier 54000 GTX 1080 Ti 1024 0.01 100 625 0.9 ~1700 95.65%
Pytorch_SVHNClassifier 54000 GTX 1080 Ti 512 0.16 100 625 0.9 ~1700 95.65%

Introduction

The main idea of this exercise is to study the evolvement of the state of the art and main work along topic of visual attention model. There are two datasets that are studied: augmented MNIST and SVHN. The former dataset focused on canonical problem  —  handwritten digits recognition, but with cluttering and translation, the latter focus on real world problem  —  street view house number (SVHN) transcription. In this exercise, the following papers are studied in the way of developing a good intuition to choose a proper model to tackle each of the above challenges.

For more detail, please refer to this blog

Recommended environment

Python 3.6+
paddlepaddle-gpu 2.0.2
nccl 2.0+
editdistance
visdom
h5py
protobuf
lmdb

Install

Install env

Install paddle following the official tutorial.

pip install visdom
pip install h5py
pip install protobuf
pip install lmdb

Dataset

  1. Download SVHN Dataset format 1

  2. Extract to data folder, now your folder structure should be like below:

    SVHNClassifier
        - data
            - extra
                - 1.png 
                - 2.png
                - ...
                - digitStruct.mat
            - test
                - 1.png 
                - 2.png
                - ...
                - digitStruct.mat
            - train
                - 1.png 
                - 2.png
                - ...
                - digitStruct.mat
    

Usage

  1. (Optional) Take a glance at original images with bounding boxes

    Open `draw_bbox.ipynb` in Jupyter
    
  2. Convert to LMDB format

    $ python convert_to_lmdb.py --data_dir ./data
    
  3. (Optional) Test for reading LMDBs

    Open `read_lmdb_sample.ipynb` in Jupyter
    
  4. Train

    $ python train.py --data_dir ./data --logdir ./logs
    
  5. Retrain if you need

    $ python train.py --data_dir ./data --logdir ./logs_retrain --restore_checkpoint ./logs/model-100.pth
    
  6. Evaluate

    $ python eval.py --data_dir ./data ./logs/model-100.pth
    
  7. Visualize

    $ python -m visdom.server
    $ python visualize.py --logdir ./logs
    
  8. Infer

    $ python infer.py --checkpoint=./logs/model-100.pth ./images/test1.png
    
  9. Clean

    $ rm -rf ./logs
    or
    $ rm -rf ./logs_retrain
    
Owner
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