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Bongard-LOGO

[Update on 03/20/2021]: The code for training Bongard LOGO baselines was released here.

Introduction

Bongard-LOGO is a Python code repository with the purpose of generating synthetic Bongard problems on a large scale with little human intervention. It mainly consists of a Bongard-LOGO dataset that has 12,000 synthetic Bongard problems, and a bongard Python library that is used for the synthesis of the Bongard problems. The user could use the Bongard-LOGO dataset for concept learning and symbolic learning, or use the bongard library for custom Bongard problem synthesis.

The Bongard-LOGO Dataset

The Bongard-LOGO dataset contains 12,000 Bongard problems solely based on the shape concept, by considering as nuisances shape positions, orientations and sizes, etc. It is divided into three types of problems: 3,600 Freeform Shape Problems, 4,000 Basic Shape Problems and 4,400 Abstract Shape Problems.

Furthermore, each image is paired with an action program, with which we can recover the shape(s) in the image, by using the provided rendering method.

Below are examples of each type of Bongard-LOGO problems.

Freeform Shape Problem Basic Shape Problem Abstract Shape Problem
Freeform Basic Abstract

The Bongard-LOGO dataset could be directly downloaded from Google Drive.

For more details of how to generate the Bongard-LOGO dataset, please refer to the Bongard-LOGO example.

The bongard Python Library

Installation

Using Docker Container

It is strongly recommended to use Docker container. The Docker container has the bongard library installed and the user does not have to install it manually.

To build the Docker image, please run the following command in the terminal.

docker build -f docker/bongard.Dockerfile --tag=bongard:0.0.1 .

To run the Docker container, please run the following command in the terminal.

docker run -it --rm bongard:0.0.1

Installation From Source

To install the bongard library from the latest source code, please run the following command in the terminal.

git clone https://github.com/NVlabs/Bongard-LOGO.git
cd Bongard-LOGO
pip install .

Installation From PyPI

To install the bongard library from the published packages on PyPI, please run the following command in the terminal.

pip install bongard

Usages

The Bongard library consists of four typical classes, BongardProblem, BongardImage, OneStrokeShape, and BasicAction. There exists a hierarchy for the four classes.

Each BongardProblem consists of several positive BongardImages that represents a certain concept and several negative BongardImages that violates the concept in the positive images.

Each positive or negative BongardImage consists of several OneStrokeShapes. Each OneStrokeShape consists of several consecutive BasicActions which are performed by a Python turtle.

In short, the data structure hierarchy is BongardProblem -> BongardImage -> OneStrokeShape -> BasicAction.

Note that BongardImage is not really an image, but a schema for the painter to create image. This also applies to the above other classes.

BasicAction

The BasicAction is performed by a Python turtle. There are two types of BasicActions that have been implemented, LineAction and ArcAction. LineAction is moving following a line with optionally some features in the trajectory, such as zigzag and stamps, followed by an optional change in the moving directions. Similarly, ArcAction is moving following an arc with optionally some features in the trajectory, such as zigzag and stamps, followed by an optional change in the moving directions.

from bongard import LineAction, ArcAction
# Create an instance of LineAction
# line_length: a float number between 0 and 1.0.
# line_type: a string indicating the type of lines. Currently, the BongardPainter supported "normal", "zigzag", "square", "arrow", "circle", "triangle", and "classic".
# turn_direction: a string indicating turning left or right after moving. It has to be "L" or "R". "L" for left and "R" for right.
# turn_angle: a float number between 0 and 180.0.
line_action = LineAction(line_length=0.5, line_type="normal", turn_direction="R", turn_angle=90)
# Create an instance of ArcAction
# arc_angle: a float number between -360 and 360.
# arc_radius: a float number between 0 and 1.0.
# arc_type: a string indicating the type of lines. Currently, the BongardPainter have supported "normal", "zigzag", "square", "arrow", "circle", "triangle", and "classic".
# turn_direction: a string indicating turning left or right after moving. It has to be "L" or "R". "L" for left and "R" for right.
# turn_angle: a float number between 0 and 180.0.
arc_action = ArcAction(arc_angle=90, arc_type=n"zigzag", turn_direction="R", turn_angle=0, arc_radius=0.5)

OneStrokeShape

The OneStrokeShape could be created using a sequence of BasicActions.

from bongard import LineAction, OneStrokeShape

# Create a rectangle
def create_rectangle(w, h):

    action_0 = LineAction(line_length=w, line_type="normal", turn_direction="R", turn_angle=90)
    action_1 = LineAction(line_length=h, line_type="normal", turn_direction="R", turn_angle=90)
    action_2 = LineAction(line_length=w, line_type="normal", turn_direction="R", turn_angle=90)
    action_3 = LineAction(line_length=h, line_type="normal", turn_direction="R", turn_angle=90)

    rectangle_actions = [action_0, action_1, action_2, action_3]

    # basic_actions: a list of consecutive `BasicAction`.
    # start_coordinates: (float, float). The start coordinates on the canvas for the turtle. This would be set later when we start to generate images.
    # start_orientation: a float number between 0 and 360.0. The start orientation on the canvas for the turtle. This would be set later when we start to generate images.
    rectangle = OneStrokeShape(basic_actions=rectangle_actions, start_coordinates=None, start_orientation=None)

    return rectangle

rectangle = create_rectangle(w=0.5, h=0.3)

BongardImage

The BongardImage could be created using a list of OneStrokeShapes.

from bongard import OneStrokeShape, BongardImage

# Create an image that consists of two rectangles
def create_random_rectangle_image():

    shapes = []

    for _ in range(2):
        w = np.random.uniform(low=0.3, high=1.0)
        h = np.random.uniform(low=0.3, high=1.0)
        shapes.append(create_rectangle(w=w, h=h))

    # one_stroke_shapes: a list of `OneStrokeShape`s
    bongard_image = BongardImage(one_stroke_shapes=shapes)

    return bongard_image

rectangle_image = create_random_rectangle_image()

BongardProblem

The BongardImage could be created using a list of positive BongardImages and a list of negative BongardImages.

# Create an Bongard problem that has rectangle images as positive images and circle images are negative images.
from bongard import BongardImage, BongardProblem

bongard_problem_positive_images = [create_random_rectangle_image() for _ in range(7)]
bongard_problem_negative_images = [create_random_circle_image() for _ in range(7)]

# positive_bongard_images: a list of `BongardImage`s
# negative_bongard_images: a list of `BongardImage`s
# problem_name: string.
# problem_description: string.
# positive_rules: string.
# negative_rules: string.
bongard_problem = BongardProblem(positive_bongard_images=bongard_problem_positive_images
                                negative_bongard_images=bongard_problem_negative_images,
                                problem_name=None, problem_description=None, 
                                positive_rules=None, negative_rules=None)

We could also extract normalized action program from BongardProblem or create BongardProblem from normalized action program.

# Extract action program
action_program = bongard_problem.get_action_string_list()
# Create `BongardProblem` from action program
bongard_problem_recovered = BongardProblem.import_from_action_string_list(action_string_list=action_program)

A typical action program for BongardProblem is like this. The actions from the positive images comes first followed by the actions from the negative images.

[[[['line_triangle_0.715-0.250', 'line_triangle_0.891-0.250', 'line_triangle_0.715-0.250', 'line_zigzag_0.891-0.250']], [['line_circle_0.752-0.250', 'line_normal_0.606-0.250', 'line_normal_0.752-0.250', 'line_normal_0.606-0.250'], ['line_triangle_0.568-0.250', 'line_circle_0.854-0.250', 'line_normal_0.568-0.250', 'line_zigzag_0.854-0.250']], [['line_normal_0.885-0.250', 'line_triangle_0.536-0.250', 'line_normal_0.885-0.250', 'line_triangle_0.536-0.250'], ['line_normal_0.970-0.250', 'line_circle_0.398-0.250', 'line_triangle_0.970-0.250', 'line_normal_0.398-0.250']], [['line_circle_0.623-0.250', 'line_triangle_0.846-0.250', 'line_normal_0.623-0.250', 'line_zigzag_0.846-0.250'], ['line_triangle_0.400-0.250', 'line_circle_0.961-0.250', 'line_normal_0.400-0.250', 'line_triangle_0.961-0.250']], [['line_normal_0.430-0.250', 'line_circle_0.816-0.250', 'line_normal_0.430-0.250', 'line_normal_0.816-0.250'], ['line_normal_0.527-0.250', 'line_normal_0.405-0.250', 'line_zigzag_0.527-0.250', 'line_triangle_0.405-0.250']], [['line_normal_0.777-0.250', 'line_zigzag_0.552-0.250', 'line_zigzag_0.777-0.250', 'line_triangle_0.552-0.250']], [['line_triangle_0.979-0.250', 'line_circle_0.757-0.250', 'line_circle_0.979-0.250', 'line_triangle_0.757-0.250'], ['line_normal_0.825-0.250', 'line_zigzag_0.725-0.250', 'line_circle_0.825-0.250', 'line_normal_0.725-0.250']]], [[['arc_normal_0.497_0.625-0.500', 'arc_triangle_0.497_0.625-0.500', 'arc_triangle_0.497_0.625-0.500', 'arc_normal_0.497_0.625-0.500'], ['arc_normal_0.248_0.625-0.500', 'arc_normal_0.248_0.625-0.500', 'arc_normal_0.248_0.625-0.500', 'arc_circle_0.248_0.625-0.500']], [['arc_circle_0.342_0.625-0.500', 'arc_triangle_0.342_0.625-0.500', 'arc_triangle_0.342_0.625-0.500', 'arc_zigzag_0.342_0.625-0.500'], ['arc_normal_0.402_0.625-0.500', 'arc_zigzag_0.402_0.625-0.500', 'arc_zigzag_0.402_0.625-0.500', 'arc_zigzag_0.402_0.625-0.500']], [['arc_zigzag_0.311_0.625-0.500', 'arc_circle_0.311_0.625-0.500', 'arc_normal_0.311_0.625-0.500', 'arc_zigzag_0.311_0.625-0.500'], ['arc_circle_0.451_0.625-0.500', 'arc_normal_0.451_0.625-0.500', 'arc_zigzag_0.451_0.625-0.500', 'arc_triangle_0.451_0.625-0.500']], [['arc_normal_0.353_0.625-0.500', 'arc_triangle_0.353_0.625-0.500', 'arc_zigzag_0.353_0.625-0.500', 'arc_zigzag_0.353_0.625-0.500']], [['arc_circle_0.212_0.625-0.500', 'arc_triangle_0.212_0.625-0.500', 'arc_circle_0.212_0.625-0.500', 'arc_triangle_0.212_0.625-0.500'], ['arc_circle_0.289_0.625-0.500', 'arc_zigzag_0.289_0.625-0.500', 'arc_circle_0.289_0.625-0.500', 'arc_circle_0.289_0.625-0.500']], [['arc_triangle_0.475_0.625-0.500', 'arc_circle_0.475_0.625-0.500', 'arc_circle_0.475_0.625-0.500', 'arc_triangle_0.475_0.625-0.500'], ['arc_circle_0.460_0.625-0.500', 'arc_triangle_0.460_0.625-0.500', 'arc_circle_0.460_0.625-0.500', 'arc_zigzag_0.460_0.625-0.500']], [['arc_circle_0.373_0.625-0.500', 'arc_circle_0.373_0.625-0.500', 'arc_triangle_0.373_0.625-0.500', 'arc_normal_0.373_0.625-0.500']]]]

BongardProblemPainter

The BongardProblemPainter could be used for plotting Bongard problems with variations from shape sizes, positions and orientations. Given a BongardProblem, assuming each BongardImage has no more than two OneStrokeShapes, it could generate random size, position and orientation for each OneStrokeShape with minimal chance of OneStrokeShape collisions.

from bongard import BongardProblem, BongardProblemPainter
# Set random seed for `BongardProblemPainter` to make the painting process reproducible.
bongard_problem_painter = BongardProblemPainter(random_seed=random_seed)
# `BongardProblemPainter` will generate `ps` and `png` format images for the `BongardProblem` provided.
bongard_problem_painter.create_bongard_problem(bongard_problem=bongard_problem, bongard_problem_ps_dir=bongard_problem_ps_dir, bongard_problem_png_dir=bongard_problem_png_dir)

Human Designed Shapes

More than six hundreds of shapes have been designed for Bongard problem synthesis. The action program annotations and shape attributed were saved in data/human_designed_shapes.tsv and data/human_designed_shapes_attributes.tsv. The users are encourage to create new shapes and attributes, and contribute to this project.

The preview of human designed shapes could be found here.

This is the most basic example for showing how to use the Bongard library. Every user is strongly recommended to go through the short code.

This is a slightly more advanced example for showing how to take advantage of the human designed shapes we provided for creating shapes.

These are the scripts for generating the Bongard-LOGO dataset. Advanced Bongard problem samplers were implemented.

This is a simple example for showing how to manually assign locations and sizes of the shapes in Bongard images.

FAQs

How to use the library to generate Bongard problem images on a remote server without display?

The Bongard library has dependencies on Python Turtle is a X client. To use the Bongard library without display, we recommend to use Virtual X Server xvfb and ghostscript. To install xvfb and ghostscript on Ubuntu, please run the following commands.

[sudo] apt update
[sudo] apt install -y xvfb ghostscript

To use the Bongard library without display, please add xvfb-run at the beginning of the command. For example,

xvfb-run python [script_name.py]

Got error "ModuleNotFoundError: No module named 'tkinter'"?

If the user is not using the Docker container we provided, it is likely that there might be some missing dependencies. For this particular dependency, please install it via apt on Ubuntu.

[sudo] sudo apt install python3-tk

Reference

To cite this work, please use

@INPROCEEDINGS{Nie2020Bongard,
  author = {Nie, Weili and Yu, Zhiding and Mao, Lei and Patel, Ankit B and Zhu, Yuke and Anandkumar, Animashree},
  title = {Bongard-LOGO: A New Benchmark for Human-Level Concept Learning and Reasoning},
  booktitle = {Advances in Neural Information Processing Systems (NeurIPS)},
  year = {2020}
}

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Bongard-LOGO is a Python code repository with the purpose of generating synthetic Bongard problems on a large scale with little human intervention.

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