Autonomous Perception: 3D Object Detection with Complex-YOLO

Overview

Autonomous Perception: 3D Object Detection with Complex-YOLO

Gif of 50 frames of darknet

LiDAR object detection with Complex-YOLO takes four steps:

  1. Computing LiDAR point-clouds from range images.
  2. Transforming the point-cloud to a Bird's Eye View using the Point Cloud Library (PCL).
  3. Using both Complex-YOLO Darknet and Resnet to predict 3D dectections on transformed LiDAR images.
  4. Evaluating the detections based Precision and Recall.

Complex-Yolo Pipeline

Complex-Yolo is both highly accurate and highly performant in production:

Complex-Yolo Performance

Computing LiDAR Point-Clouds from Waymo Range Images

Waymo uses multiple sensors including LiDAR, cameras, radar for autonomous perception. Even microphones are used to help detect ambulance and police sirens.

Visualizing LiDAR Range and Intensity Channels

LiDAR visualization 1

Roof-mounted "Top" LiDAR rotates 360 degrees with a vertical field of vision or ~20 degrees (-17.6 degrees to +2.4 degrees) with a 75m limit in the dataset.

LiDAR data is stored as a range image in the Waymo Open Dataset. Using OpenCV and NumPy, we filtered the "range" and "intensity" channels from the image, and converted the float data to 8-bit unsigned integers. Below is a visualization of two video frames, where the top half is the range channel, and the bottom half is the intensity for each visualization:

LiDAR visualization 2

Visualizing th LiDAR Point-cloud

There are 64 LEDs in Waymo's top LiDAR sensor. Limitations of 360 LiDAR include the space between beams (aka resolution) widening with distance from the origin. Also the car chasis will create blind spots, creating the need for Perimeter LiDAR sensors to be inlcuded on the sides of the vehicles.

We leveraged the Open3D library to make a 3D interactive visualization of the LiDAR point-cloud. Commonly visible features are windshields, tires, and mirros within 40m. Beyond 40m, cars are like slightly rounded rectangles where you might be able to make ou the windshield. Further away vehicles and extremely close vehicles typically have lower resolution, as well as vehicles obstructing the detection of other vehicles.

10 Vehicles Showing Different Types of LiDAR Interaction:

  1. Truck with trailer - most of truck is high resolution visible, but part of the trailer is in the 360 LiDAR's blind-spot.
  2. Car partial in blind spot, back-half isn't picked up well. This car blocks the larges area behind it from being detected by the LiDAR.
  3. Car shape is higly visible, where you can even see the side-mirrors and the LiDAR passing through the windshield.
  4. Car driving in other lane. You can see the resolution of the car being lower because the further away the 64 LEDs project the lasers, the futher apart the points of the cloud will be. It is also obstructed from some lasers by Car 2.
  5. This parked is unobstructed, but far enough away where it's difficult to make our the mirrors or the tires.
  6. Comparing this car to Car 3, you can see where most of the definition is either there or slightly worse, because it is further way.
  7. Car 7 is both far away and obstructed, so you can barely tell it's a car. It's basically a box with probably a windshield.
  8. Car 8 is similar to Car 6 on the right side, but obstructed by Car 6 on the left side.
  9. Car 9 is at the limit of the LiDAR's dataset's perception. It's hard to tell it's a car.
  10. Car 10 is at the limit of the LiDAR's perception, and is also obstructed by car 8.

Transforming the point-cloud to a Bird's Eye View using the Point Cloud Library

Convert sensor coordinates to Bird's-Eye View map coordinates

The birds-eye view (BEV) of a LiDAR point-cloud is based on the transformation of the x and y coordinates of the points.

BEV map properties:

  • Height:

    H_{i,j} = max(P_{i,j} \cdot [0,0,1]T)

  • Intensity:

    I_{i,j} = max(I(P_{i,j}))

  • Density:

    D_{i,j} = min(1.0,\ \frac{log(N+1)}{64})

P_{i,j} is the set of points that falls into each cell, with i,j as the respective cell coordinates. N_{i,j} refers to the number of points in a cell.

Compute intensity layer of the BEV map

We created a BEV map of the "intensity" channel from the point-cloud data. We identified the top-most (max height) point with the same (x,y)-coordinates from the point-cloud, and assign the intensity value to the corresponding BEV map point. The data was normalized and outliers were removed until the features of interest were clearly visible.

Compute height layer of the BEV map

This is a visualization of the "height" channel BEV map. We sorted and pruned point-cloud data, normalizing the height in each BEV map pixel by the difference between max. and min.

Model-based Object Detection in BEV Image

We used YOLO3 and Resnet deep-learning models to doe 3D Object Detection. Complex-YOLO: Real-time 3D Object Detection on Point Clouds and Super Fast and Accurate 3D Object Detection based on 3D LiDAR Point Clouds.

Extract 3D bounding boxes from model response

The models take a three-channel BEV map as an input, and predict the class about coordinates of objects (vehicles). We then transformed these BEV coordinates back to the vehicle coordinate-space to draw the bounding boxes in both images.

Transforming back to vehicle space

Below is a gif the of detections in action: Results from 50 frames of resnet detection

Performance Evaluation for Object Detection

Compute intersection-over-union between labels and detections

Based on the labels within the Waymo Open Dataset, your task is to compute the geometrical overlap between the bounding boxes of labels and detected objects and determine the percentage of this overlap in relation to the area of the bounding boxes. A default method in the literature to arrive at this value is called intersection over union, which is what you will need to implement in this task.

After detections are made, we need a set of metrics to measure our progress. Common classification metrics for object detection include:

TP, FN, FP

  • TP: True Positive - Predicts vehicle or other object is there correctly
  • TN: True Negative - Correctly predicts vehicle or object is not present
  • FP: False Positive - Dectects object class incorrectly
  • FN: False Negative - Didn't detect object class when there should be a dectection

One popular method of making these determinations is measuring the geometric overlap of bounding boxes vs the total area two predicted bounding boxes take up in an image, or th Intersecion over Union (IoU).

IoU formula

IoU for Complex-Yolo

Classification Metrics Based on Precision and Recall

After all the LiDAR and Camera data has been transformed, and the detections have been predicted, we calculate the following metrics for the bounding box predictions:

Formulas

  • Precision:

    \frac{TP}{TP + FP}

  • Recall:

    \frac{TP}{TP + FN}

  • Accuracy:

    \frac{TP + TN}{TP + TN + FP + FN}

  • Mean Average Precision:

    \frac{1}{n} \sum_{Recall_{i}}Precision(Recall_{i})

Precision and Recall Results Visualizations

Results from 50 frames: Results from 50 frames

Precision: .954 Recall: .921

Complex Yolo Paper

Owner
Thomas Dunlap
Machine Learning Engineer and Data Scientist with a focus on deep learning, computer vision, and robotics.
Thomas Dunlap
Commonality in Natural Images Rescues GANs: Pretraining GANs with Generic and Privacy-free Synthetic Data - Official PyTorch Implementation (CVPR 2022)

Commonality in Natural Images Rescues GANs: Pretraining GANs with Generic and Privacy-free Synthetic Data (CVPR 2022) Potentials of primitive shapes f

31 Sep 27, 2022
Bag of Tricks for Natural Policy Gradient Reinforcement Learning

Bag of Tricks for Natural Policy Gradient Reinforcement Learning [ArXiv] Setup Python 3.8.0 pip install -r req.txt Mujoco 200 license Main Files main.

Brennan Gebotys 1 Oct 10, 2022
Pytorch Implementation of paper "Noisy Natural Gradient as Variational Inference"

Noisy Natural Gradient as Variational Inference PyTorch implementation of Noisy Natural Gradient as Variational Inference. Requirements Python 3 Pytor

Tony JiHyun Kim 119 Dec 02, 2022
Pytorch implementation of the paper "Optimization as a Model for Few-Shot Learning"

Optimization as a Model for Few-Shot Learning This repo provides a Pytorch implementation for the Optimization as a Model for Few-Shot Learning paper.

Albert Berenguel Centeno 238 Jan 04, 2023
modelvshuman is a Python library to benchmark the gap between human and machine vision

modelvshuman is a Python library to benchmark the gap between human and machine vision. Using this library, both PyTorch and TensorFlow models can be evaluated on 17 out-of-distribution datasets with

Bethge Lab 244 Jan 03, 2023
Virtual Dance Reality Stage is a feature that offers you to share a stage with another user virtually.

Virtual Dance Reality Stage is a feature that offers you to share a stage with another user virtually. It uses the concept of Image Background Removal using DeepLab Architecture (based on Semantic Se

Devashi Choudhary 5 Aug 24, 2022
Attentive Implicit Representation Networks (AIR-Nets)

Attentive Implicit Representation Networks (AIR-Nets) Preprint | Supplementary | Accepted at the International Conference on 3D Vision (3DV) teaser.mo

29 Dec 07, 2022
Official code for the paper "Self-Supervised Prototypical Transfer Learning for Few-Shot Classification"

Self-Supervised Prototypical Transfer Learning for Few-Shot Classification This repository contains the reference source code and pre-trained models (

EPFL INDY 44 Nov 04, 2022
PyTorch Implementation of PortaSpeech: Portable and High-Quality Generative Text-to-Speech

PortaSpeech - PyTorch Implementation PyTorch Implementation of PortaSpeech: Portable and High-Quality Generative Text-to-Speech. Model Size Module Nor

Keon Lee 279 Jan 04, 2023
ICLR 2021, Fair Mixup: Fairness via Interpolation

Fair Mixup: Fairness via Interpolation Training classifiers under fairness constraints such as group fairness, regularizes the disparities of predicti

Ching-Yao Chuang 49 Nov 22, 2022
Code for You Only Cut Once: Boosting Data Augmentation with a Single Cut

You Only Cut Once (YOCO) YOCO is a simple method/strategy of performing augmenta

88 Dec 28, 2022
PN-Net a neural field-based framework for depth estimation from single-view RGB images.

PN-Net We present a neural field-based framework for depth estimation from single-view RGB images. Rather than representing a 2D depth map as a single

1 Oct 02, 2021
existing and custom freqtrade strategies supporting the new hyperstrategy format.

freqtrade-strategies Description Existing and self-developed strategies, rewritten to support the new HyperStrategy format from the freqtrade-develop

39 Aug 20, 2021
python library for invisible image watermark (blind image watermark)

invisible-watermark invisible-watermark is a python library and command line tool for creating invisible watermark over image.(aka. blink image waterm

Shield Mountain 572 Jan 07, 2023
fcn by tensorflow

Update An example on how to integrate this code into your own semantic segmentation pipeline can be found in my KittiSeg project repository. tensorflo

9 May 22, 2022
ICCV2021, Tokens-to-Token ViT: Training Vision Transformers from Scratch on ImageNet

Tokens-to-Token ViT: Training Vision Transformers from Scratch on ImageNet, ICCV 2021 Update: 2021/03/11: update our new results. Now our T2T-ViT-14 w

YITUTech 1k Dec 31, 2022
Frequency Domain Image Translation: More Photo-realistic, Better Identity-preserving

Frequency Domain Image Translation: More Photo-realistic, Better Identity-preserving This is the source code for our paper Frequency Domain Image Tran

Mu Cai 52 Dec 23, 2022
MASA-SR: Matching Acceleration and Spatial Adaptation for Reference-Based Image Super-Resolution (CVPR2021)

MASA-SR Official PyTorch implementation of our CVPR2021 paper MASA-SR: Matching Acceleration and Spatial Adaptation for Reference-Based Image Super-Re

DV Lab 126 Dec 20, 2022
Reading list for research topics in Masked Image Modeling

awesome-MIM Reading list for research topics in Masked Image Modeling(MIM). We list the most popular methods for MIM, if I missed something, please su

ligang 231 Dec 07, 2022
FAIR's research platform for object detection research, implementing popular algorithms like Mask R-CNN and RetinaNet.

Detectron is deprecated. Please see detectron2, a ground-up rewrite of Detectron in PyTorch. Detectron Detectron is Facebook AI Research's software sy

Facebook Research 25.5k Jan 07, 2023