[CVPR 2021] A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts

Overview

Visual-Reasoning-eXplanation

[CVPR 2021 A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts]

Project Page | Video | Paper

Editor

Figure: An example result with the proposed VRX. To explain the prediction (i.e., fire engine and not alternatives like ambulance), VRX provides both visual and structural clues.

A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts
Yunhao Ge, Yao Xiao, Zhi Xu, Meng Zheng, Srikrishna Karanam, Terrence Chen, Laurent Itti, Ziyan Wu
IEEE/ CVF International Conference on Computer Vision and Pattern Recognition (CVPR), 2021

We considered the challenging problem of interpreting the reasoning logic of a neural network decision. We propose a novel framework to interpret neural networks which extracts relevant class-specific visual concepts and organizes them using structural concepts graphs based on pairwise concept relationships. By means of knowledge distillation, we show VRX can take a step towards mimicking the reasoning process of NNs and provide logical, concept-level explanations for final model decisions. With extensive experiments, we empirically show VRX can meaningfully answer “why” and “why not” questions about the prediction, providing easy-to-understand insights about the reasoning process. We also show that these insights can potentially provide guidance on improving NN’s performance.

Editor

Figure: Examples of representing images as structural concept graph.

Editor

Figure: Pipeline for Visual Reasoning Explanation framework.

Thanks for a re-implementation from sssufmug, we added more features and finish the whole pipeline.

Getting Started

Installation

  • Clone this repo:
git clone https://github.com/gyhandy/Visual-Reasoning-eXplanation.git
cd Visual-Reasoning-eXplanation
  • Dependencies
pip install -r requirements.txt

Datasets

  • We use a subset of ImageNet as our source data. There are intrested classes which want to do reasoning, such as fire angine, ambulance and school bus, and also other random images for discovering concepts. You can download the source data that we used in our paper here: source [http://ilab.usc.edu/andy/dataset/source.zip]

  • Input files for training GNN and doing reasoning. You can get these data by doing discover concepts and match concepts yourself, but we also provide those files to help you doing inference directly. You can download the result data here: result[http://ilab.usc.edu/andy/dataset/result.zip]

Datasets Preprocess

Unzip source.zip as well as result.zip, and then place them in ./source and ./result. If you only want to do inference, you can skip discover concept, match concept and training Structural Concept Graph (SCG).

Discover concept

For more information about discover concept, you can refer to ACE: Towards Automatic Concept Based Explanations. We use the pretrained model provided by tensorflow to discover cencept. With default setting you can simply run

python3 discover_concept.py

If you want to do this step with a custom model, you should write a wrapper for it containing the following methods:

run_examples(images, BOTTLENECK_LAYER): which basically returens the activations of the images in the BOTTLENECK_LAYER. 'images' are original images without preprocessing (float between 0 and 1)
get_image_shape(): returns the shape of the model's input
label_to_id(CLASS_NAME): returns the id of the given class name.
get_gradient(activations, CLASS_ID, BOTTLENECK_LAYER): computes the gradient of the CLASS_ID logit in the logit layer with respect to activations in the BOTTLENECK_LAYER.

If you want to discover concept with GradCam, please also implement a 'gradcam.py' for your model and place it into ./src. Then run:

python3 discover_concept.py --model_to_run YOUR_LOCAL_PRETRAINED_MODEL_NAME --model_path YOUR_LOCAL_PATH_OF_PRETRAINED_MODEL --labels_path LABEL_PATH_OF_YOUR_MODEL_LABEL --use_gradcam TRUE/FALSE

Match concept

This step will use the concepts you discovered in last step to match new images. If you want to match your own images, please put them into ./source and create a new folder named IMAGE_CLASS_NAME. Then run:

python3 macth_concept.py --model_to_run YOUR_LOCAL_PRETRAINED_MODEL_NAME --model_path YOUR_LOCAL_PATH_OF_PRETRAINED_MODEL --labels_path LABEL_PATH_OF_YOUR_MODEL_LABEL --use_gradcam TRUE/FALSE

Training Structural Concept Graph (SCG)

python3 VR_training_XAI.py

Then you can find the checkpoints of model in ./result/model.

Reasoning a image

For images you want to do reasoning, you should first doing match concept to extract concept knowledge. Once extracted graph knowledge for SCG, you can do the inference. For example, if you want to inference ./source/fire_engine/n03345487_19835.JPEG, the "img_class" is "ambulance" and "img_idx" is 10367, then run:

python3 Xception_WhyNot.py --img_class fire_engine --img_idx 19835

Some visualize results

Editor
Editor
Editor

Contact / Cite

Got Questions? We would love to answer them! Please reach out by email! You may cite us in your research as:

@inproceedings{ge2021peek,
  title={A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts},
  author={Ge, Yunhao and Xiao, Yao and Xu, Zhi and Zheng, Meng and Karanam, Srikrishna and Chen, Terrence and Itti, Laurent and Wu, Ziyan},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={2195--2204},
  year={2021}
}

We will post other relevant resources, implementations, applications and extensions of this work here. Please stay tuned

Owner
Andy_Ge
Ph.D. Student in USC, interested in Computer Vision, Machine Learning, and AGI
Andy_Ge
NeuralWOZ: Learning to Collect Task-Oriented Dialogue via Model-based Simulation (ACL-IJCNLP 2021)

NeuralWOZ This code is official implementation of "NeuralWOZ: Learning to Collect Task-Oriented Dialogue via Model-based Simulation". Sungdong Kim, Mi

NAVER AI 31 Oct 25, 2022
Pre-trained models for a Cascaded-FCN in caffe and tensorflow that segments

Cascaded-FCN This repository contains the pre-trained models for a Cascaded-FCN in caffe and tensorflow that segments the liver and its lesions out of

300 Nov 22, 2022
EMNLP 2021 paper The Devil is in the Detail: Simple Tricks Improve Systematic Generalization of Transformers.

Codebase for training transformers on systematic generalization datasets. The official repository for our EMNLP 2021 paper The Devil is in the Detail:

Csordás Róbert 57 Nov 21, 2022
GalaXC: Graph Neural Networks with Labelwise Attention for Extreme Classification

GalaXC GalaXC: Graph Neural Networks with Labelwise Attention for Extreme Classification @InProceedings{Saini21, author = {Saini, D. and Jain,

Extreme Classification 28 Dec 05, 2022
Framework for estimating the structures and parameters of Bayesian networks (DAGs) at per-sample resolution

Sample-specific Bayesian Networks A framework for estimating the structures and parameters of Bayesian networks (DAGs) at per-sample or per-patient re

Caleb Ellington 1 Sep 23, 2022
PyDEns is a framework for solving Ordinary and Partial Differential Equations (ODEs & PDEs) using neural networks

PyDEns PyDEns is a framework for solving Ordinary and Partial Differential Equations (ODEs & PDEs) using neural networks. With PyDEns one can solve PD

Data Analysis Center 220 Dec 26, 2022
Official code for 'Pixel-wise Energy-biased Abstention Learning for Anomaly Segmentationon Complex Urban Driving Scenes'

PEBAL This repo contains the Pytorch implementation of our paper: Pixel-wise Energy-biased Abstention Learning for Anomaly Segmentationon Complex Urba

Yu Tian 115 Dec 29, 2022
Metric learning algorithms in Python

metric-learn: Metric Learning in Python metric-learn contains efficient Python implementations of several popular supervised and weakly-supervised met

1.3k Dec 28, 2022
LQM - Improving Object Detection by Estimating Bounding Box Quality Accurately

Improving Object Detection by Estimating Bounding Box Quality Accurately Abstract Object detection aims to locate and classify object instances in ima

IM Lab., POSTECH 0 Sep 28, 2022
Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information"

Repo for paper "Dynamic Placement of Rapidly Deployable Mobile Sensor Robots Using Machine Learning and Expected Value of Information" Notes I probabl

Berkeley Expert System Technologies Lab 0 Jul 01, 2021
A unified framework to jointly model images, text, and human attention traces.

connect-caption-and-trace This repository contains the reference code for our paper Connecting What to Say With Where to Look by Modeling Human Attent

Meta Research 73 Oct 24, 2022
torchbearer: A model fitting library for PyTorch

Note: We're moving to PyTorch Lightning! Read about the move here. From the end of February, torchbearer will no longer be actively maintained. We'll

632 Dec 13, 2022
Learning an Adaptive Meta Model-Generator for Incrementally Updating Recommender Systems

Learning an Adaptive Meta Model-Generator for Incrementally Updating Recommender Systems This is our experimental code for RecSys 2021 paper "Learning

11 Jul 28, 2022
Level Based Customer Segmentation

level_based_customer_segmentation Level Based Customer Segmentation Persona Veri Seti kullanılarak müşteri segmentasyonu yapılmıştır. KOLONLAR : PRICE

Buse Yıldırım 6 Dec 21, 2021
ImVoxelNet: Image to Voxels Projection for Monocular and Multi-View General-Purpose 3D Object Detection

ImVoxelNet: Image to Voxels Projection for Monocular and Multi-View General-Purpose 3D Object Detection This repository contains implementation of the

Visual Understanding Lab @ Samsung AI Center Moscow 190 Dec 30, 2022
This library is a location of the LegacyLogger for PyTorch Lightning.

neptune-contrib Documentation See neptune-contrib documentation site Installation Get prerequisites python versions 3.5.6/3.6 are supported Install li

neptune.ai 26 Oct 07, 2021
NUANCED is a user-centric conversational recommendation dataset that contains 5.1k annotated dialogues and 26k high-quality user turns.

NUANCED: Natural Utterance Annotation for Nuanced Conversation with Estimated Distributions Overview NUANCED is a user-centric conversational recommen

Facebook Research 18 Dec 28, 2021
[NeurIPS 2020] Official repository for the project "Listening to Sound of Silence for Speech Denoising"

Listening to Sounds of Silence for Speech Denoising Introduction This is the repository of the "Listening to Sounds of Silence for Speech Denoising" p

Henry Xu 40 Dec 20, 2022
Official PyTorch implementation of "Camera Distance-aware Top-down Approach for 3D Multi-person Pose Estimation from a Single RGB Image", ICCV 2019

PoseNet of "Camera Distance-aware Top-down Approach for 3D Multi-person Pose Estimation from a Single RGB Image" Introduction This repo is official Py

Gyeongsik Moon 677 Dec 25, 2022
NeurIPS'21 Tractable Density Estimation on Learned Manifolds with Conformal Embedding Flows

NeurIPS'21 Tractable Density Estimation on Learned Manifolds with Conformal Embedding Flows This repo contains the code for the paper Tractable Densit

Layer6 Labs 4 Dec 12, 2022