A privacy-focused, intelligent security camera system.

Overview

Self-Hosted Home Security Camera System

A privacy-focused, intelligent security camera system.

Features:

  • Multi-camera support w/ minimal configuration. Supports USB cameras and the Raspberry Pi camera module.
  • Motion detection that automatically saves videos and lets you view them in the web app.
  • Encrypted in transit, both from the cameras to the server and the server to your browser.
  • Self-Hosted
  • Free and Open Source

Example screenshots

Setting up the server

Docker:

  1. Clone this repository
  2. Generate SSL certificates: ./create-certs.sh. Alternatively, you may place your own certs in the certs dir
  3. Build and run the docker containers: API_URL=<server-hostname:server-port> docker-compose up -d --build. For example, if the API was running on the host sec-cam-server and port 8444, you should use API_URL=sec-cam-server:8444

Adding a camera

Installation:

NOTE: These instructions assume you are deploying to a raspberry pi running Raspbian OS.

  1. Install the python3-opencv package and dependencies: sudo apt-get install python3-opencv libatlas-base-dev
  2. Clone this repository
  3. Install the package: cd backend && python3 -m pip install .[streamer]. If you are using the Raspberry Pi camera module, run cd backend && python3 -m pip install .[streamer,picam].
  4. Update --server_url in run.sh to point at the host you deployed the server to.
  5. In the Web UI, you should see live video from that camera.
Comments
  • CORS error with self-signed certificates

    CORS error with self-signed certificates

    Some browsers like Firefox don't like cross-origin requests to URLs using self-signed certs even if you've already trusted certificate on the UI.

    Workaround:

    In the browser you're using, load an API endpoint (something like https://:8444/rooms) and go through the "this certificate can't be trusted" warning. Then, go back to the UI and refresh the page and see if its fixed.

    bug help wanted 
    opened by scottbarnesg 5
  • Run one system

    Run one system

    Can this be ran on all on one system with just a usb camera plugged in, and being able to serve the web user interface to localhost? Also, if so, would it all be in one container, or multiple? Thanks

    question 
    opened by neu-ma-tic 2
  • Add authentication

    Add authentication

    Currently, the UI is available to anyone with network access to the host. We need to develop or integrate an authentication solution to provide login capabilities.

    enhancement 
    opened by scottbarnesg 2
  • Fix CORS issue with self-signed certificates

    Fix CORS issue with self-signed certificates

    Changes:
    • Updates Flask server to serve React app.
    • Removes unused nginx config
    • Moves frontend container to an intermediate container in server
    • Updates default server port for both the UI and API to 8443
    Testing:
    • Check out this branch
    • Generate new (untrusted) certs: ./create-certs.sh
    • Start the server: docker-compose up -d --build
    • Open the Web UI in Firefox at https://localhost:8443. After clicking through the certificate warnings, open the debug console and verify there are no CORS errors.
    • Navigate to the videos page: https://localhost:8443/videos. Verify the videos load correctly and that there are no CORS errors in the debug console.

    Closes #16

    opened by scottbarnesg 1
  • Improve motion detection algorithm

    Improve motion detection algorithm

    Currently, the motion detection algorithm performs background subtraction on the incoming video frames to detection motion. This can cause "false positives", flagging motion that we don't care about (e.g. the wind blowing tree branches)

    This should be enhanced to identify more specific "objects of interest" (e.g. a person walking by).

    enhancement help wanted 
    opened by scottbarnesg 1
  • Run camera streamer code as a systemd service

    Run camera streamer code as a systemd service

    • Adds a base .service file for running streamer as a systemd service.
    • Adds create-streamer-service.sh to configure .service file for per-system installation.
    • Updates README.md with instructions on how to install streamer service under systemd.
    opened by scottbarnesg 0
  • Improve motion detection

    Improve motion detection

    Changes:

    • Replaces background-subtraction based motion detection with contour-based approach
    • Saved videos now have a box drawn around areas in which motion is detected
    • Adds --capture-delay argument to streamer.
    • Adds a size limit to the streamer's frame capture queue.

    Closes #5

    opened by scottbarnesg 0
  • Add authentication

    Add authentication

    Tasks:

    • [x] Implement authentication logic
    • [x] Add login endpoint
    • [x] Enforce authentication on endpoints
    • [x] Integrate authentication into UI
    • [x] Cache token as a cookie
    • [x] Add mechanism to create a user
    • [x] Add /api prefix to all API endpoints
    • [x] Validate token on every page
    • [x] Implement authentication for SocketIO
    • [x] Make Login and Registration pages look acceptable
    • [x] Update README

    Closes #4

    opened by scottbarnesg 0
  • Fix docker-compose build hanging with large video directory

    Fix docker-compose build hanging with large video directory

    Changes:

    • Adds .dockerignore w/ entry to ignore video data dir

    Testing:

    • Create data/videos and put lots of data into it.
    • Check out this branch and run docker-compose build server
    • Verify the command does not hang

    Fixes #20

    opened by scottbarnesg 0
  • Update image transmission to use a video stream

    Update image transmission to use a video stream

    References:

    • https://pericror.com/software/python-create-a-webrtc-video-stream-from-images/
    • https://github.com/aiortc/aiortc
    • https://pypi.org/project/av/
    enhancement 
    opened by scottbarnesg 0
  • Redesign the UI

    Redesign the UI

    The existing UI provides minimal functionality and needs an overhaul

    Key changes:

    • Update video stream page to allow clicking on stream to increase its size on the page. Possible reduce non-selected videos to side-bar.
    • Update the video replay page to make videos searchable by date, time, camera id, etc.
    enhancement help wanted 
    opened by scottbarnesg 0
Releases(0.3.6)
  • 0.3.6(Nov 19, 2022)

  • 0.3.5(Sep 11, 2022)

  • 0.3.4(Aug 11, 2022)

  • 0.3.3(Aug 3, 2022)

    • Updates UI to automatically refresh session token before it expires.
    • Automatically redirects the UI to the login page if token validation fails.
    Source code(tar.gz)
    Source code(zip)
  • 0.3.2(Jul 31, 2022)

    • Improves motion detection algorithm, replacing background subtraction with contour-based algorithm.
    • Recorded videos now have a box drawn around the area of motion detected.
    • Moves motion detection threshold value from input argument to environment variable
    Source code(tar.gz)
    Source code(zip)
  • 0.3.1(Jul 24, 2022)

  • 0.3.0(Jul 23, 2022)

  • 0.2.9(Jun 20, 2022)

  • 0.2.8(Jun 20, 2022)

  • 0.2.7(May 3, 2022)

  • 0.2.6(Apr 24, 2022)

  • 0.2.5.a(Apr 22, 2022)

  • 0.2.4(Apr 21, 2022)

  • 0.2.3(Mar 28, 2022)

    • Makes the motion detection threshold configurable via the cli
    • Fixes an issue that caused docker-compose to hang with a large video data directory
    Source code(tar.gz)
    Source code(zip)
  • 0.2.2(Mar 27, 2022)

    • Fixes an issue that caused CORS errors in some browsers when using self-signed certificates.
    • Updates the server configuration to serve both the Web UI and API from the Flask server.
    • Updates the default server listening port to 8443 for both the web app and API.
    Source code(tar.gz)
    Source code(zip)
  • 0.2.1(Mar 21, 2022)

    • Bug fixes for the motion detection algorithm.
    • Updates the list of saved videos to display in order w/ most recent first.
    • Adds support for dynamically setting the API url in the UI at runtime
    • Updates frontend docker container to Node v16
    Source code(tar.gz)
    Source code(zip)
Owner
Scott Barnes
Software Engineer
Scott Barnes
Character Controllers using Motion VAEs

Character Controllers using Motion VAEs This repo is the codebase for the SIGGRAPH 2020 paper with the title above. Please find the paper and demo at

Electronic Arts 165 Jan 03, 2023
Repository for RNNs using TensorFlow and Keras - LSTM and GRU Implementation from Scratch - Simple Classification and Regression Problem using RNNs

RNN 01- RNN_Classification Simple RNN training for classification task of 3 signal: Sine, Square, Triangle. 02- RNN_Regression Simple RNN training for

Nahid Ebrahimian 13 Dec 13, 2022
Dataset and Code for ICCV 2021 paper "Real-world Video Super-resolution: A Benchmark Dataset and A Decomposition based Learning Scheme"

Dataset and Code for RealVSR Real-world Video Super-resolution: A Benchmark Dataset and A Decomposition based Learning Scheme Xi Yang, Wangmeng Xiang,

Xi Yang 92 Jan 04, 2023
Predict halo masses from simulations via graph neural networks

HaloGraphNet Predict halo masses from simulations via Graph Neural Networks. Given a dark matter halo and its galaxies, creates a graph with informati

Pablo Villanueva Domingo 20 Nov 15, 2022
Extreme Dynamic Classifier Chains - XGBoost for Multi-label Classification

Extreme Dynamic Classifier Chains Classifier chains is a key technique in multi-label classification, sinceit allows to consider label dependencies ef

6 Oct 08, 2022
Official implementation of our paper "LLA: Loss-aware Label Assignment for Dense Pedestrian Detection" in Pytorch.

LLA: Loss-aware Label Assignment for Dense Pedestrian Detection This project provides an implementation for "LLA: Loss-aware Label Assignment for Dens

35 Dec 06, 2022
MPViT:Multi-Path Vision Transformer for Dense Prediction

MPViT : Multi-Path Vision Transformer for Dense Prediction This repository inlcu

Youngwan Lee 272 Dec 20, 2022
Our VMAgent is a platform for exploiting Reinforcement Learning (RL) on Virtual Machine (VM) scheduling tasks.

VMAgent is a platform for exploiting Reinforcement Learning (RL) on Virtual Machine (VM) scheduling tasks. VMAgent is constructed based on one month r

56 Dec 12, 2022
PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon.

Hand Mesh Reconstruction Introduction This repo is the PyTorch implementation of hand mesh reconstruction described in CMR and MobRecon. Update 2021-1

Xingyu Chen 236 Dec 29, 2022
Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI

EmotionUI Software for Multimodalty 2D+3D Facial Expression Recognition (FER) UI. demo screenshot (with RealSense) required packages Python = 3.6 num

Yang Jiao 2 Dec 23, 2021
Structured Edge Detection Toolbox

################################################################### # # # Structure

Piotr Dollar 779 Jan 02, 2023
[ICML 2021, Long Talk] Delving into Deep Imbalanced Regression

Delving into Deep Imbalanced Regression This repository contains the implementation code for paper: Delving into Deep Imbalanced Regression Yuzhe Yang

Yuzhe Yang 568 Dec 30, 2022
Research code of ICCV 2021 paper "Mesh Graphormer"

MeshGraphormer ✨ ✨ This is our research code of Mesh Graphormer. Mesh Graphormer is a new transformer-based method for human pose and mesh reconsructi

Microsoft 251 Jan 08, 2023
Playing around with FastAPI and streamlit to create a YoloV5 object detector

FastAPI-Streamlit-based-YoloV5-detector Playing around with FastAPI and streamlit to create a YoloV5 object detector It turns out that a User Interfac

2 Jan 20, 2022
An efficient 3D semantic segmentation framework for Urban-scale point clouds like SensatUrban, Campus3D, etc.

An efficient 3D semantic segmentation framework for Urban-scale point clouds like SensatUrban, Campus3D, etc.

Zou 33 Jan 03, 2023
In this repo we reproduce and extend results of Learning in High Dimension Always Amounts to Extrapolation by Balestriero et al. 2021

In this repo we reproduce and extend results of Learning in High Dimension Always Amounts to Extrapolation by Balestriero et al. 2021. Balestriero et

Sean M. Hendryx 1 Jan 27, 2022
Keras Model Implementation Walkthrough

Keras Model Implementation Walkthrough

Luke Wood 17 Sep 27, 2022
Package for extracting emotions from social media text. Tailored for financial data.

EmTract: Extracting Emotions from Social Media Text Tailored for Financial Contexts EmTract is a tool that extracts emotions from social media text. I

13 Nov 17, 2022
A Deep Reinforcement Learning Framework for Stock Market Trading

DQN-Trading This is a framework based on deep reinforcement learning for stock market trading. This project is the implementation code for the two pap

61 Jan 01, 2023