The fastest way to visualize GradCAM with your Keras models.

Overview

VizGradCAM

VizGradCam is the fastest way to visualize GradCAM in Keras models. GradCAM helps with providing visual explainability of trained models and may serve as an important step in ensuring that engineers observe the regions that contributed to certain inference results.

Most tutorials or function features similar methods but requires the name of the last convolutional layer, performing the upscaling of heatmap and superimposing it on the original image. In this repository, we aim to combine all of those tasks.

Usage

This function can be imported or simply copied out into your script where required. Specific usage can be found in the sample Jupyter Notebook.

"""
Function Parameters:
    model        : Compiled Model with Weights Loaded
    image        : Image to Perform Inference On 
    plot_results : True - Function Plots using PLT
                   False - Returns Heatmap Array
    interpolant  : Interpolant Value that Describes The Superimposition Ratio
                   Between Image and Heatmap
"""
VizGradCAM(model, image, plot_results=True, interpolant=0.5)

Sample Usage

# Import Function
from gradcam import VizGradCAM

# Load Your Favourite Image
test_img = img_to_array(load_img("monkey.jpeg" , target_size=(224,224)))

# Use The Function - Boom!
VizGradCAM(EfficientNetB4(weights="imagenet"), test_img))

Results

plot_results=True plot_results=False

More Information

This function is inspired by Keras' GradCAM tuturial here and the original paper, Grad-CAM: Visual Explanations from Deep Networks via Gradient-based Localization can be found here.

Tested / Supported Models

This function works with Keras CNN models and most Keras Applications / Based Models. This means that it will work even if you used include_top=False to add your own final dense layers for transfer learning on some of the models listed below. In GradCAM, we are looking to target gradients flowing into the last convolutional layer.

Model Architecture Support Dimension
VGG16 (224,224)
VGG19 (224,224)
DenseNet121 (224,224)
DenseNet169 (224,224)
ResNet50 (224,224)
ResNet101 (224,224)
ResNet152 (224,224)
ResNet50V2 (224,224)
ResNet101V2 (224,224)
ResNet152V2 (224,224)
MobileNet (224,224)
MobileNetV2 (224,224)
Xception (299,299)
InceptionV3 (299,299)
InceptionResNetV2 (299,299)
EfficientNetB0 (224,224)
EfficientNetB1 (240,240)
EfficientNetB2 (260,260)
EfficientNetB3 (300,300)
EfficientNetB4 (380,380)
EfficientNetB5 (456,456)
EfficientNetB6 (528,528)
EfficientNetB7 (600,600)
Owner
Curious Human
The repo of the preprinting paper "Labels Are Not Perfect: Inferring Spatial Uncertainty in Object Detection"

Inferring Spatial Uncertainty in Object Detection A teaser version of the code for the paper Labels Are Not Perfect: Inferring Spatial Uncertainty in

ZINING WANG 21 Mar 03, 2022
Pacman-AI - AI project designed by UC Berkeley. Designed reflex and minimax agents for the game Pacman.

Pacman AI Jussi Doherty CAP 4601 - Introduction to Artificial Intelligence - Fall 2020 Python version 3.0+ Source of this project This repo contains a

Jussi Doherty 1 Jan 03, 2022
Pytorch implementation of YOLOX、PPYOLO、PPYOLOv2、FCOS an so on.

简体中文 | English miemiedetection 概述 miemiedetection是女装大佬咩酱基于YOLOX进行二次开发的个人检测库(使用的深度学习框架为pytorch),支持Windows、Linux系统,以女装大佬咩酱的名字命名。miemiedetection是一个不需要安装的

248 Jan 02, 2023
CVPR2022 paper "Dense Learning based Semi-Supervised Object Detection"

[CVPR2022] DSL: Dense Learning based Semi-Supervised Object Detection DSL is the first work on Anchor-Free detector for Semi-Supervised Object Detecti

Bhchen 69 Dec 08, 2022
Code accompanying the paper "How Tight Can PAC-Bayes be in the Small Data Regime?"

How Tight Can PAC-Bayes be in the Small Data Regime? This is the code to reproduce all experiments for the following paper: @inproceedings{Foong:2021:

5 Dec 21, 2021
Distance Encoding for GNN Design

Distance-encoding for GNN design This repository is the official PyTorch implementation of the DEGNN and DEAGNN framework reported in the paper: Dista

172 Nov 08, 2022
A simplistic and efficient pure-python neural network library from Phys Whiz with CPU and GPU support.

A simplistic and efficient pure-python neural network library from Phys Whiz with CPU and GPU support.

Manas Sharma 19 Feb 28, 2022
Character Grounding and Re-Identification in Story of Videos and Text Descriptions

Character in Story Identification Network (CiSIN) This project hosts the code for our paper. Youngjae Yu, Jongseok Kim, Heeseung Yun, Jiwan Chung and

8 Dec 09, 2022
A Python wrapper for Google Tesseract

Python Tesseract Python-tesseract is an optical character recognition (OCR) tool for python. That is, it will recognize and "read" the text embedded i

Matthias A Lee 4.6k Jan 05, 2023
3D ResNets for Action Recognition (CVPR 2018)

3D ResNets for Action Recognition Update (2020/4/13) We published a paper on arXiv. Hirokatsu Kataoka, Tenga Wakamiya, Kensho Hara, and Yutaka Satoh,

Kensho Hara 3.5k Jan 06, 2023
External Attention Network

Beyond Self-attention: External Attention using Two Linear Layers for Visual Tasks paper : https://arxiv.org/abs/2105.02358 EAMLP will come soon Jitto

MenghaoGuo 357 Dec 11, 2022
Airborne Optical Sectioning (AOS) is a wide synthetic-aperture imaging technique

AOS: Airborne Optical Sectioning Airborne Optical Sectioning (AOS) is a wide synthetic-aperture imaging technique that employs manned or unmanned airc

JKU Linz, Institute of Computer Graphics 39 Dec 09, 2022
Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer.

DocEnTR Description Pytorch implementation of the paper DocEnTr: An End-to-End Document Image Enhancement Transformer. This model is implemented on to

Mohamed Ali Souibgui 74 Jan 07, 2023
True per-item rarity for Loot

True-Rarity True per-item rarity for Loot (For Adventurers) and More Loot A.K.A mLoot each out/true_rarity_{item_type}.json file contains probabilitie

Dan R. 3 Jul 26, 2022
Code for the paper "Multi-task problems are not multi-objective"

Multi-Task problems are not multi-objective This is the code for the paper "Multi-Task problems are not multi-objective" in which we show that the com

Michael Ruchte 5 Aug 19, 2022
This is the official implement of paper "ActionCLIP: A New Paradigm for Action Recognition"

This is an official pytorch implementation of ActionCLIP: A New Paradigm for Video Action Recognition [arXiv] Overview Content Prerequisites Data Prep

268 Jan 09, 2023
This respository includes implementations on Manifoldron: Direct Space Partition via Manifold Discovery

Manifoldron: Direct Space Partition via Manifold Discovery This respository includes implementations on Manifoldron: Direct Space Partition via Manifo

dayang_wang 4 Apr 28, 2022
Multivariate Time Series Forecasting with efficient Transformers. Code for the paper "Long-Range Transformers for Dynamic Spatiotemporal Forecasting."

Spacetimeformer Multivariate Forecasting This repository contains the code for the paper, "Long-Range Transformers for Dynamic Spatiotemporal Forecast

QData 440 Jan 02, 2023
Learn about quantum computing and algorithm on quantum computing

quantum_computing this repo contains everything i learn about quantum computing and algorithm on quantum computing what is aquantum computing quantum

arfy slowy 8 Dec 25, 2022
🙄 Difficult algorithm, Simple code.

🎉TensorFlow2.0-Examples🎉! "Talk is cheap, show me the code." ----- Linus Torvalds Created by YunYang1994 This tutorial was designed for easily divin

1.7k Dec 25, 2022