a spacial-temporal pattern detection system for home automation

Related tags

Deep Learningargos
Overview

Argos

docker pulls

a spacial-temporal pattern detection system for home automation. Based on OpenCV and Tensorflow, can run on raspberry pi and notify HomeAssistant via MQTT or webhooks.

Demo

Have a spare raspberry pi or jetson nano (or old laptop/mac mini) lying around? Have wifi connected security cams in your house (or a raspi camera)? Want to get notified when someone exits or enters your main door? When someone waters your plants (or forgets to)? When your dog hasn't been fed food in a while, or hasn't eaten? When someone left the fridge door open and forgot? left the gas stove running and forgot? when birds are drinking from your dog's water bowl? Well, you're not alone, and you're at the right place :)

Architecture

argos

  • Take a video input (a raspberry pi camera if run on a rpi, an RTMP stream of a security cam, or a video file)
  • Run a simple motion detection algorithm on the stream, applying minimum box thresholds, negative masks and masks
  • Run object detection on either the cropped frame where motion was detected or even the whole frame if needed, using tensorflow object detection API. There is support for both tensorflow 1 and 2 as well as tensorflow lite, and custom models as well
  • Serves a flask webserver to allow you to see the motion detection and object detection in action, serve a mpeg stream which can be configured as a camera in HomeAssistant
  • Object detection is also highly configurable to threshold or mask out false positives
  • Object detection features an optional "detection buffer' which can be used to get the average detection in moving window of frames before reporting the maximum cumulative average detection
  • Supports sending notifications to HomeAssistant via MQTT or webhooks. Webhook notification send the frame on which the detection was triggered, to allow you to create rich media notifications from it via the HA android or iOS apps.
  • Pattern detection: both the motion-detector and object-detector send events to a queue which is monitored and analyzed by a pattern detector. You can configure your own "movement patterns" - e.g. a person is exiting a door or entering a door, or your dog is going to the kitchen. It keeps a configurable history of states (motion detected in a mask, outside a mask, object detected (e.g. person), etc.) and your movement patterns are pre-configured sequence of states which identify that movement. door_detect.py provides a movement pattern detector to detect if someone is entering or exiting a door
  • All of the above functionality is provided by running stream.py. There's also serve.py which serves as an object detection service which can be called remotely from a low-grade CPU device like a raspberry pi zero w which cannot run tensorflow lite on its own. The motion detector can still be run on the pi zero, and only object detection can be done remotely by calling this service, making a distributed setup.
  • Architected to be highly concurrent and asynchronous (uses threads and queue's between all the components - flask server, motion detector, object detector, pattern detector, notifier, mqtt, etc)
  • Has tools to help you generate masks, test and tune the detectors, etc.
  • Every aspect of every detector can be tuned in the config files (which are purposefully kept as python classes and not yaml), every aspect is logged with colored output on the console for you to debug what is going on.

Installation

On a pi, as a systemd service
cd ~
git clone https://github.com/angadsingh/argos
sudo apt-get install python3-pip
sudo apt-get install python3-venv
pip3 install --upgrade pip
python3 -m venv argos-venv/
source argos-venv/bin/activate
pip install https://github.com/bitsy-ai/tensorflow-arm-bin/releases/download/v2.4.0/tensorflow-2.4.0-cp37-none-linux_armv7l.whl
pip install wheel
pip install -r argos/requirements.txt

#only required for tf2
git clone https://github.com/tensorflow/models.git
cd models/research/object_detection/packages/tf2
python -m pip install . --no-deps

make a systemd service to run it automatically

cd ~/argos
sudo cp resources/systemd/argos_serve.service /etc/systemd/system/
sudo cp resources/systemd/argos_stream.service /etc/systemd/system/
sudo systemctl daemon-reload
sudo systemctl enable argos_serve.service
sudo systemctl enable argos_stream.service
sudo systemctl start argos_serve
sudo systemctl start argos_stream

see the logs

journalctl --unit argos_stream.service -f
As a docker container

You can use the following instructions to install argos as a docker container (e.g. if you already use docker on your rpi for hassio-supervised, or you intend to install it on your synology NAS which has docker, or you just like docker)

Install docker (optional)

curl -fsSL https://get.docker.com -o get-docker.sh
sudo sh get-docker.sh

Run argos as a docker container

Note: replace the docker tag name below for your cpu architecture

image example device notes
angadsingh/argos:armv7 raspberry pi 2/3/4+
angadsingh/argos:x86_64 PC, Mac
angadsingh/argos:x86_64_gpu PC, Mac tensorflow with gpu support. run with docker flag --runtime=nvidia

stream.py:

docker run --rm -p8081:8081 -v configs:/configs \
						-v /home/pi/detections:/output_detections \
						-v /home/pi/argos-ssh:/root/.ssh angadsingh/argos:armv7 \
						/usr/src/argos/stream.py --ip 0.0.0.0 --port 8081 \
						--config configs.your_config

serve.py:

docker run --rm -p8080:8080 -v configs:/configs \
						-v /home/pi/upload:/upload angadsingh/argos:armv7 \
						/usr/src/argos/serve.py --ip 0.0.0.0 --port 8080 \
						--config configs.your_config  --uploadfolder "/upload"

make a systemd service to run it automatically. these services automatically download the latest docker image and run them for you: (note: you'll have to change the docker tag inside the service file for your cpu architecture)

sudo wget https://raw.githubusercontent.com/angadsingh/argos/main/resources/systemd/argos_serve_docker.service -P /etc/systemd/system/
sudo wget https://raw.githubusercontent.com/angadsingh/argos/main/resources/systemd/argos_stream_docker.service -P /etc/systemd/system/
sudo systemctl daemon-reload
sudo systemctl enable argos_serve_docker.service
sudo systemctl enable argos_stream_docker.service
sudo systemctl start argos_serve_docker
sudo systemctl start argos_stream_docker

see the logs

journalctl --unit argos_serve_docker.service -f
journalctl --unit argos_stream_docker.service -f

Usage

stream.py - runs the motion detector, object detector (with detection buffer) and pattern detector

stream.py --ip 0.0.0.0 --port 8081 --config configs.config_tflite_ssd_example
Method Endpoint Description
Browse / will show a web page with the real time processing of the input video stream, and a separate video stream showing the object detector output
GET /status status shows the current load on the system
GET /config shows the config
GET /config?= will let you edit any config parameter without restarting the service
GET /image returns the latest frame as a JPEG image (useful in HA generic camera platform)
GET /video_feed streams an MJPEG video stream of the motion detector (useful in HA generic camera platform)
GET /od_video_feed streams an MJPEG video stream of the object detector

serve.py

serve.py --ip 0.0.0.0 --port 8080 --config configs.config_tflite_ssd_example --uploadfolder upload
Method Endpoint Description
POST /detect params:

file: the jpeg file to run the object detector on
threshold: object detector threshold (override config.tf_accuracy_threshold)
nmask: base64 encoded negative mask to apply. format: (xmin, ymin, xmax, ymax)

Home assistant automations

ha_automations/notify_door_movement_at_entrance.yaml - triggered by pattern detector ha_automations/notify_person_is_at_entrance.yaml - triggered by object detector

both of these use HA webhooks. i used MQTT earlier but it was too delayed and unreliable for my taste. the project still supports MQTT though and you'll have to make mqtt sensors in HA for the topics you're sending the notifications to here.

Configuration

both stream.py and serve.py share some configuration for the object detection, but stream.py builds on top of that with a lot more configuration for the motion detector, object detection buffer, pattern detector, and stream input configuration, etc. The example config documents the meaning of all the parameters

Performance

This runs at the following FPS with every component enabled:

device component fps
raspberry pi 4B motion detector 18 fps
raspberry pi 4B object detector (tflite) 5 fps

I actually run multiple of these for different RTMP cameras, each at 1 fps (which is more than enough for all real time home automation use cases)

Note:

This is my own personal project. It is not really written in a readable way with friendly abstractions, as that wasn't the goal. The goal was to solve my home automation problem quickly so that I can get back to real work :) So feel free to pick and choose snippets of code as you like or the whole solution if it fits your use case. No compromises were made in performance or accuracy, only 'coding best practices'. I usually keep such projects private but thought this is now meaty enough to be usable to someone else in ways I cannot imagine, so don't judge this project on its maturity or reuse readiness level ;) . Feel free to fork this project and make this an extendable framework if you have the time.

If you have any questions feel free to raise a github issue and i'll respond as soon as possible

Special thanks to these resources on the web for helping me build this.

Owner
Angad Singh
Angad Singh
The official implementation of the research paper "DAG Amendment for Inverse Control of Parametric Shapes"

DAG Amendment for Inverse Control of Parametric Shapes This repository is the official Blender implementation of the paper "DAG Amendment for Inverse

Elie Michel 157 Dec 26, 2022
Drslmarkov - Distributionally Robust Structure Learning for Discrete Pairwise Markov Networks

Distributionally Robust Structure Learning for Discrete Pairwise Markov Networks

1 Nov 24, 2022
In this project, we create and implement a deep learning library from scratch.

ARA In this project, we create and implement a deep learning library from scratch. Table of Contents Deep Leaning Library Table of Contents About The

22 Aug 23, 2022
Bilinear attention networks for visual question answering

Bilinear Attention Networks This repository is the implementation of Bilinear Attention Networks for the visual question answering and Flickr30k Entit

Jin-Hwa Kim 506 Nov 29, 2022
Official Implementation for the "An Empirical Investigation of 3D Anomaly Detection and Segmentation" paper.

An Empirical Investigation of 3D Anomaly Detection and Segmentation Project | Paper Official PyTorch Implementation for the "An Empirical Investigatio

Eliahu Horwitz 55 Dec 14, 2022
PySLM Python Library for Selective Laser Melting and Additive Manufacturing

PySLM Python Library for Selective Laser Melting and Additive Manufacturing PySLM is a Python library for supporting development of input files used i

Dr Luke Parry 35 Dec 27, 2022
Efficient Conformer: Progressive Downsampling and Grouped Attention for Automatic Speech Recognition

Efficient Conformer: Progressive Downsampling and Grouped Attention for Automatic Speech Recognition Official implementation of the Efficient Conforme

Maxime Burchi 145 Dec 30, 2022
Data and Code for ACL 2021 Paper "Inter-GPS: Interpretable Geometry Problem Solving with Formal Language and Symbolic Reasoning"

Introduction Code and data for ACL 2021 Paper "Inter-GPS: Interpretable Geometry Problem Solving with Formal Language and Symbolic Reasoning". We cons

Pan Lu 81 Dec 27, 2022
3ds-Ghidra-Scripts - Ghidra scripts to help with 3ds reverse engineering

3ds Ghidra Scripts These are ghidra scripts to help with 3ds reverse engineering

Zak 7 May 23, 2022
3D Multi-Person Pose Estimation by Integrating Top-Down and Bottom-Up Networks

3D Multi-Person Pose Estimation by Integrating Top-Down and Bottom-Up Networks Introduction This repository contains the code and models for the follo

124 Jan 06, 2023
Statistical and Algorithmic Investing Strategies for Everyone

Eiten - Algorithmic Investing Strategies for Everyone Eiten is an open source toolkit by Tradytics that implements various statistical and algorithmic

Tradytics 2.5k Jan 02, 2023
Implementation of the GBST block from the Charformer paper, in Pytorch

Charformer - Pytorch Implementation of the GBST (gradient-based subword tokenization) module from the Charformer paper, in Pytorch. The paper proposes

Phil Wang 105 Dec 26, 2022
PyTorch implementation of "Learn to Dance with AIST++: Music Conditioned 3D Dance Generation."

Learn to Dance with AIST++: Music Conditioned 3D Dance Generation. Installation pip install -r requirements.txt Prepare Dataset bash data/scripts/pre

Zj Li 8 Sep 07, 2021
This project hosts the code for implementing the ISAL algorithm for object detection and image classification

Influence Selection for Active Learning (ISAL) This project hosts the code for implementing the ISAL algorithm for object detection and image classifi

25 Sep 11, 2022
The code for the CVPR 2021 paper Neural Deformation Graphs, a novel approach for globally-consistent deformation tracking and 3D reconstruction of non-rigid objects.

Neural Deformation Graphs Project Page | Paper | Video Neural Deformation Graphs for Globally-consistent Non-rigid Reconstruction Aljaž Božič, Pablo P

Aljaz Bozic 134 Dec 16, 2022
Multiple Object Extraction from Aerial Imagery with Convolutional Neural Networks

This is an implementation of Volodymyr Mnih's dissertation methods on his Massachusetts road & building dataset and my original methods that are publi

Shunta Saito 255 Sep 07, 2022
StyleGAN-NADA: CLIP-Guided Domain Adaptation of Image Generators

StyleGAN-NADA: CLIP-Guided Domain Adaptation of Image Generators [Project Website] [Replicate.ai Project] StyleGAN-NADA: CLIP-Guided Domain Adaptation

992 Dec 30, 2022
Volsdf - Volume Rendering of Neural Implicit Surfaces

Volume Rendering of Neural Implicit Surfaces Project Page | Paper | Data This re

Lior Yariv 221 Jan 07, 2023
Anomaly detection in multi-agent trajectories: Code for training, evaluation and the OpenAI highway simulation.

Anomaly Detection in Multi-Agent Trajectories for Automated Driving This is the official project page including the paper, code, simulation, baseline

12 Dec 02, 2022
Code for our paper "Interactive Analysis of CNN Robustness"

Perturber Code for our paper "Interactive Analysis of CNN Robustness" Datasets Feature visualizations: Google Drive Fine-tuning checkpoints as saved m

Stefan Sietzen 0 Aug 17, 2021