Skip to main content

A Python package to generate heatmaps, lowrank, and sparsity from deep learning models.

Project description

API

Download

  1. Please vist the repo: https://github.com/Thomas-uestc/API
  2. Please download 'Template.zip'.

Description of Folders

  • datasets: This folder should hold the raw datasets used for the project.
  • export: This folder is for files that include models.
  • result: This folder is for pretrained model parameters
  • mats: This directory stores MATLAB-related files, such as .mat files or other results generated during computation.
  • your script: Your script should be placed at the same level as 'export'

Usage Guide for dulrs Package

The dulrs package provides tools to calculate and visualize some evaluation matrix (heatmap, low-rankness, sparsity)of our models on various scenarios from different datasets.

Installation

First, install the package using pip:

pip install dulrs

Importing the Package

Import the package in your Python script:

from dulrs import dulrs_class

Available Functions

The package includes the following functions:

  1. dulrs_class(model_name, model_path, use_cuda=True, num_stages=6)
  2. dulrs_class.heatmap(img_path, data_name,output_mat,output_png)
  3. dulrs_class.lowrank_cal(img_path, model_name, data_name, save_dir)
  4. dulrs_class.lowrank_draw(model_name, data_name, mat_dir, save_dir)
  5. dulrs_class.sparsity_cal(img_path, model_name, data_name, save_dir)

Function Descriptions and Examples

0. dulrs_class(model_name, model_path, use_cuda=True, num_stages=6)

The dulrs_class in the dulrs package is used to initialize the models with pretrained parameters and including following fucntions.

1. dulrs_class.heatmap(img_path, data_name, output_mat, output_png)

The dulrs_class.heatmap function in the dulrs package allows users to draw and save the heatmaps obtained from different stages.

2. dulrs_class.lowrank_cal(img_path, model_name, data_name, save_dir)

The dulrs_class.lowrank_cal function in the dulrs package allows users to calculate and save the low-rankness data with mat format.

3. dulrs_class.lowrank_draw(model_name, data_name, mat_dir, save_dir)

The dulrs_class.lowrank_draw function in the dulrs package allows users to draw the low-rankness figure based on the calculated low-rankess data and save with png format.

4. dulrs_class.sparsity_cal(img_path, model_name, data_name, save_dir)

The dulrs_class.sparsity_cal function in the dulrs package allows users to calculate and save the sparsity data with mat format.

Function Parameters

The dulrs_class accepts the following parameters:

  • model_name: refer to the model which is underestimated.
  • model_path: the pretrained parameters pkl path.
  • use_cuda: Determined whether use GPU for acceleration.
  • num_stages: Determined the number of saving stages.

The dulrs_class.heatmap function accepts the following parameters:

  • img_path: refer to the testing image.
  • data_name: refer to the name of testing image.
  • output_mat: save path for result with mat format.
  • output_png: save path for result with png format.

The dulrs_class.lowrank_cal function accepts the following parameters:

  • img_path: refer to the testing image set.
  • model_name: refer to the model which is underestimated.
  • data_name: refer to the name of testing image.
  • save_dir: save path for low-rankness result with mat format.

The dulrs_class.lowrank_draw function accepts the following parameters:

  • model_name: refer to the model which is underestimated.
  • data_name: refer to the name of testing image.
  • mat_dir: refer to the path for low-rankess result.
  • save_dir: save path for low rankness result with png format.

The dulrs_class.sparsity_cal function accepts the following parameters:

  • img_path: refer to the testing image set.
  • model_name: refer to the model which is underestimated.
  • data_name: refer to the name of testing image.
  • save_dir: save path for sparsity result with mat format.

Examples

  1. Model: RPCANet_pp

Please follow the instructions below to set up the dataset and run the model:

📥 Download Dataset

Download the dataset from the following link:

📎 Google Drive - IRSTD-1k Dataset

📂 Directory Setup

After downloading:

  1. Extract the contents of the archive.
  2. Place the extracted dataset folder into the following path:
    ./datasets/
    

📜 Script Placement

Ensure that the main execution script is placed in the same directory as the export file.

📌 Example directory structure:

.
├── export/
├── your_main_script.py
└── datasets/
    └── [IRSTD-1k]

📜 Script Example

 from dulrs import dulrs_class
 import torch

 # Set CUDA as default device
 torch.set_default_tensor_type('torch.cuda.FloatTensor' if torch.cuda.is_available()     else 'torch.FloatTensor')

 dulrs = dulrs_class(
 model_name="rpcanet_pp",
 model_path="./result/ISTD/1K/s6_best.pkl",     # Path for pretrained parameters
 num_stages=6,
 use_cuda=True)

 # For heatmap generation
 heatmap = dulrs.heatmap(
     img_path="./datasets/IRSTD-1k/test/images/000009.png",
     data_name="IRSTD-1k_test_images_000009",
     output_mat="./heatmap/mat",  # If users want to save the data as mat format.    Default=None
     output_png="./heatmap/png"   # If users want to save the figure as png format.  Default=None
 )

 # For lowrank calculation
 lowrank_matrix = dulrs.lowrank_cal(
     img_path="./datasets/IRSTD-1k/test/images",
     model_name="rpcanet_pp",
     data_name="IRSTD-1k",
     save_dir= "./mats/lowrank"
 )

 # For lowrank paint based on calculation
 lowrank_matrix_draw = dulrs.lowrank_draw(
     model_name="rpcanet_pp",
     data_name="IRSTD-1k",
     mat_dir= './mats/lowrank',
     save_dir = './mats/lowrank/figure' # Save path for result with png format
 )

 # For sparsity calculation
 sparsity_matrix = dulrs.sparsity_cal(
     img_path="./datasets/IRSTD-1k/test/images",
     model_name="rpcanet_pp",
     data_name="IRSTD-1k",
     save_dir = './mats/sparsity'        # Save path for result with mat format
 )

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

dulrs-0.0.8.tar.gz (11.2 kB view details)

Uploaded Source

File details

Details for the file dulrs-0.0.8.tar.gz.

File metadata

  • Download URL: dulrs-0.0.8.tar.gz
  • Upload date:
  • Size: 11.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.8.20

File hashes

Hashes for dulrs-0.0.8.tar.gz
Algorithm Hash digest
SHA256 9ad7fc22c072ef5ea19bb51e4a309a5354ab7410ea8768b07bc7f8729321e5c8
MD5 ece192c164eecf69a4bfc921b7271348
BLAKE2b-256 ca0efac7284722fb8e94cea6b078f2242515fc7f20624c75bb1e7bceb1b0c262

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page