Run object detection model on the Raspberry Pi

Overview

Intro

Using TensorFlow Lite with Python is great for embedded devices based on Linux, such as Raspberry Pi.

This is the guide for installing TensorFlow Lite on the Raspberry Pi and running pre-trained object detection models on it.

Step 1. Setting up Rasperry Pi

Upgrade Raspbian Stretch to Buster

(If you on Buster, skip this step and simply run sudo apt-get update and sudo apt-get dist-upgrade)

$ sudo apt-get update && sudo apt-get upgrade -y

Verify nothing is wrong. Verify no errors are reported after each command. Fix as required (you’re on your own here!).

$ dpkg -C
$ apt-mark showhold

Prepare apt-get Sources

Update the sources to apt-get. This replaces “stretch” with “buster” in the repository locations giving apt-get access to the new version’s binaries.

$ sudo sed -i 's/stretch/buster/g' /etc/apt/sources.list    
$ sudo sed -i 's/stretch/buster/g' /etc/apt/sources.list.d/raspi.list

Verify this caught them all by running the following, expecting no output. If the command returns anything having previously run the sed commands above, it means more files may need tweaking. Run the sed command for each. The aim is to replace all instances of “stretch”.

$ grep -lnr stretch /etc/apt

Speed up subsequent steps by removing the list change package.

$ sudo apt-get remove apt-listchanges

Do the Upgrade

To update existing packages without updating kernel modules or removing packages, run the following.

$ sudo apt-get update && sudo apt-get upgrade -y

Alternatively, to include kernel modules and removing packages if required, run the following

$ sudo apt-get update && sudo apt-get full-upgrade -y

Cleanup old outdated packages.

$ sudo apt-get autoremove -y && sudo apt-get autoclean

Verify with

 cat /etc/os-release.

Update Firmware

$ sudo rpi-update

and

sudo apt-get install -y python3-pip

and

pip3 install --upgrade setuptools

2. Making sure camera interface is enabled in the Raspberry Pi Configuration menu

Click the Pi icon in the top left corner of the screen, select Preferences -> Raspberry Pi Configuration, and go to the Interfaces tab and verify Camera is set to Enabled. If it isn't, enable it now, and reboot the Raspberry Pi.

Converting Tensorflow to Tensorflow Lite

Using TensorFlow Lite converter. It takes TensorFlow model and generates a TensorFlow Lite model (an optimized FlatBuffer format identified by the .tflite file extension).

Step 2. Install TF Lite dependecies and set up virtual environment

clone this repo

git clone https://github.com/yanovsk/Raspberry-Pi-TF-Lite-Object-Detection

rename the folder to "tfliteod"

mv Raspberry-Pi-TF-Lite-Object-Detection tfliteod
cd tfliteod

run shell script to install get_pi_requirements

bash get_pi_req.sh

Note: shell script will auto install the lastest version of Tensorflow. To install specific version of TF, run pip3 install tensorflow==x.xx (where x.xx stands for the version you want to install)

Set up virtual environment

Install vitrtualenv

pip3 install virtualenv 

Then, create the "tfliteod-env" virtual environment by issuing:

python3 -m venv tfliteod-env

This will create a folder called tfliteod-env inside the tflite1 directory. The tfliteod-env folder will hold all the package libraries for this environment. Next, activate the environment by issuing:

source tfliteod-env/bin/activate

Step 3. Set up TensorFlow Lite detection model

Once, tensorflow is install we can proceed to seting up the object detection model.

We can use either pre-trained model or train it on our end. For the simplicity sake let's use pre-trained sample model by google

Download the sample model (also could be done thru direct link here)

wget https://storage.googleapis.com/download.tensorflow.org/models/tflite/coco_ssd_mobilenet_v1_1.0_quant_2018_06_29.zip

upzip it

unzip coco_ssd_mobilenet_v1_1.0_quant_2018_06_29.zip -d Sample_model

Step 4. Run the model

Note: the model should work on either Picamera module or any other webcam plugged in to the Raspberry Pi as a usb device.

From home/pi/tfliteod run the following command:

python3 TFL_object_detection.py --modeldir=Sample_model

After initializing webcam window should pop-up on your Raspebbery Pi and object detection should work.

Note: this model can recongnize only 80 common objects (check labels.txt for more info on metadata)

However, you can custom train the model using this guide.

Happy hacking!

Owner
Dimitri Yanovsky
Dimitri Yanovsky
The AWS Certified SysOps Administrator

The AWS Certified SysOps Administrator – Associate (SOA-C02) exam is intended for system administrators in a cloud operations role who have at least 1 year of hands-on experience with deployment, man

Aiden Pearce 32 Dec 11, 2022
Code for the paper: Sketch Your Own GAN

Sketch Your Own GAN Project | Paper | Youtube | Slides Our method takes in one or a few hand-drawn sketches and customizes an off-the-shelf GAN to mat

677 Dec 28, 2022
NeurIPS 2021, self-supervised 6D pose on category level

SE(3)-eSCOPE video | paper | website Leveraging SE(3) Equivariance for Self-Supervised Category-Level Object Pose Estimation Xiaolong Li, Yijia Weng,

Xiaolong 63 Nov 22, 2022
Dynamic vae - Dynamic VAE algorithm is used for anomaly detection of battery data

Dynamic VAE frame Automatic feature extraction can be achieved by probability di

10 Oct 07, 2022
Prososdy Morph: A python library for manipulating pitch and duration in an algorithmic way, for resynthesizing speech.

ProMo (Prosody Morph) Questions? Comments? Feedback? Chat with us on gitter! A library for manipulating pitch and duration in an algorithmic way, for

Tim 71 Jan 02, 2023
This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to generate a dynamic forecast from your own data.

📈 Automated Time Series Forecasting Background: This MVP data web app uses the Streamlit framework and Facebook's Prophet forecasting package to gene

Zach Renwick 42 Jan 04, 2023
🔮 A refreshing functional take on deep learning, compatible with your favorite libraries

Thinc: A refreshing functional take on deep learning, compatible with your favorite libraries From the makers of spaCy, Prodigy and FastAPI Thinc is a

Explosion 2.6k Dec 30, 2022
Solution of Kaggle competition: Sartorius - Cell Instance Segmentation

Sartorius - Cell Instance Segmentation https://www.kaggle.com/c/sartorius-cell-instance-segmentation Environment setup Build docker image bash .dev_sc

68 Dec 09, 2022
Source code for the GPT-2 story generation models in the EMNLP 2020 paper "STORIUM: A Dataset and Evaluation Platform for Human-in-the-Loop Story Generation"

Storium GPT-2 Models This is the official repository for the GPT-2 models described in the EMNLP 2020 paper [STORIUM: A Dataset and Evaluation Platfor

Nader Akoury 27 Dec 20, 2022
This is the second place solution for : UmojaHack Africa 2022: African Snake Antivenom Binding Challenge

UmojaHack-Africa-2022-African-Snake-Antivenom-Binding-Challenge This is the second place solution for : UmojaHack Africa 2022: African Snake Antivenom

Mami Mokhtar 10 Dec 03, 2022
This is a Python wrapper for TA-LIB based on Cython instead of SWIG.

TA-Lib This is a Python wrapper for TA-LIB based on Cython instead of SWIG. From the homepage: TA-Lib is widely used by trading software developers re

John Benediktsson 7.3k Jan 03, 2023
The repository contain code for building compiler using puthon.

Building Compiler This is a python implementation of JamieBuild's "Super Tiny Compiler" Overview JamieBuilds developed a wonderfully educative compile

Shyam Das Shrestha 1 Nov 21, 2021
FADNet++: Real-Time and Accurate Disparity Estimation with Configurable Networks

FADNet++: Real-Time and Accurate Disparity Estimation with Configurable Networks

HKBU High Performance Machine Learning Lab 6 Nov 18, 2022
Collaborative forensic timeline analysis

Timesketch Table of Contents About Timesketch Getting started Community Contributing About Timesketch Timesketch is an open-source tool for collaborat

Google 2.1k Dec 28, 2022
An Api for Emotion recognition.

PLAYEMO Playemo was built from the ground-up with Flask, a python tool that makes it easy for developers to build APIs. Use Cases Is Python your langu

greek geek 2 Jul 16, 2022
Template repository to build PyTorch projects from source on any version of PyTorch/CUDA/cuDNN.

The Ultimate PyTorch Source-Build Template Translations: 한국어 TL;DR PyTorch built from source can be x4 faster than a naïve PyTorch install. This repos

Joonhyung Lee/이준형 651 Dec 12, 2022
Adabelief-Optimizer - Repository for NeurIPS 2020 Spotlight "AdaBelief Optimizer: Adapting stepsizes by the belief in observed gradients"

AdaBelief Optimizer NeurIPS 2020 Spotlight, trains fast as Adam, generalizes well as SGD, and is stable to train GANs. Release of package We have rele

Juntang Zhuang 998 Dec 29, 2022
Prediction of MBA refinance Index (Mortgage prepayment)

Prediction of MBA refinance Index (Mortgage prepayment) Deep Neural Network based Model The ability to predict mortgage prepayment is of critical use

Ruchil Barya 1 Jan 16, 2022
A light weight data augmentation tool for training CNNs and Viola Jones detectors

hey-daug A light weight data augmentation tool for training CNNs and Viola Jones detectors (Haar Cascades). This tool inflates your data by up to six

Jaiyam Sharma 2 Nov 23, 2019
Convert Python 3 code to CUDA code.

Py2CUDA Convert python code to CUDA. Usage To convert a python file say named py_file.py to CUDA, run python generate_cuda.py --file py_file.py --arch

Yuval Rosen 3 Jul 14, 2021