A Python package to generate heatmaps, lowrank, and sparsity from deep learning models.
Project description
API
Download
- Please visit the repository: https://github.com/Thomas-uestc/API
- Download the tempate archive 'Template.zip' from the repository
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
.matfiles 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:
dulrs_class(model_name, model_path, use_cuda=True, num_stages=6)dulrs_class.heatmap(img_path, data_name,output_mat,output_png)dulrs_class.lowrank_cal(img_path, model_name, data_name, save_dir)dulrs_class.lowrank_draw(model_name, data_name, mat_dir, save_dir)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 functions.
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 under evaluation.model_path: the pretrained parameters pkl path.use_cuda: Determine whether to use GPU for acceleration.num_stages: Specifie the number of stages to save.
The dulrs_class.heatmap function accepts the following parameters:
img_path: refer to the testing image.data_name: refer to the identifier of the test image.output_mat: path to save results in .mat format.output_png: path to save results in .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 under evaluation.data_name: refer to the identifier of the test image.save_dir: path to save results in .mat format.
The dulrs_class.lowrank_draw function accepts the following parameters:
model_name: refer to the model which is under evaluation.data_name: refer to the identifier of the test image.mat_dir: refer to the path for low-rankess result.save_dir: path to save results in .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 under evaluation.data_name: refer to the identifier of the test image.save_dir: path to save results in .mat format.
Examples
- 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:
- Extract the contents of the archive.
- 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' # Path to save results in .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' # Path to save results in .mat format
)
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