A DeepStack custom model for detecting common objects in dark/night images and videos.

Overview

DeepStack_ExDark

This repository provides a custom DeepStack model that has been trained and can be used for creating a new object detection API for detecting 12 common objects (including people) in the dark/night images and videos. The Model was trained on the ExDark dataset dataset.

  • Create API and Detect Objects
  • Discover more Custom Models
  • Train your own Model

Create API and Detect Objects

The Trained Model can detect the following objects in dark/night images and videos.

  • Bicycle
  • Boat
  • Bottle
  • Bus
  • Chair
  • Car
  • Cat
  • Cup
  • Dog
  • Motorbike
  • People
  • Table

To start detecting, follow the steps below

  • Install DeepStack: Install DeepStack AI Server with instructions on DeepStack's documentation via https://docs.deepstack.cc

  • Download Custom Model: Download the trained custom model dark.pt for ExDark from this GitHub release. Create a folder on your machine and move the downloaded model to this folder.

    E.g A path on Windows Machine C\Users\MyUser\Documents\DeepStack-Models, which will make your model file path C\Users\MyUser\Documents\DeepStack-Models\dark.pt

  • Run DeepStack: To run DeepStack AI Server with the custom ExDark model, run the command that applies to your machine as detailed on DeepStack's documentation linked here.

    E.g

    For a Windows version, you run the command below

    deepstack --MODELSTORE-DETECTION "C\Users\MyUser\Documents\DeepStack-Models" --PORT 80

    For a Linux machine

    sudo docker run -v /home/MyUser/Documents/DeepStack-Models:/modelstore/detection -p 80:5000 deepquestai/deepstack

    Once DeepStack runs, you will see a log like the one below in your Terminal/Console

    That means DeepStack is running your custom dark.pt model and now ready to start detecting objects in night/dark images via the API endpoint http://localhost:80/v1/vision/custom/dark or http://your_machine_ip:80/v1/vision/custom/dark

  • Detect Objects in night image: You can detect objects in an image by sending a POST request to the url mentioned above with the paramater image set to an image using any proggramming language or with a tool like POSTMAN. For the purpose of this repository, we have provided a sample Python code below.

    • A sample image can be found in images/image.jpg of this repository

    • Install Python and install the DeepStack Python SDK via the command below

      pip install deepstack_sdk
    • Run the Python file detect.py in this repository.

      python detect.py
    • After the code runs, you will find a new image in images/image_detected.jpg with the detection visualized, with the following results printed in the Terminal/Console.

      Name: People
      Confidence: 0.74210495
      x_min: 616
      x_max: 672
      y_min: 224
      y_max: 323
      -----------------------
      Name: Dog
      Confidence: 0.82523036
      x_min: 250
      x_max: 327
      y_min: 288
      y_max: 349
      -----------------------
      Name: Dog
      Confidence: 0.86660975
      x_min: 403
      x_max: 485
      y_min: 283
      y_max: 341
      -----------------------
      Name: Dog
      Confidence: 0.87793124
      x_min: 508
      x_max: 609
      y_min: 309
      y_max: 370
      -----------------------
      Name: Dog
      Confidence: 0.89132285
      x_min: 286
      x_max: 372
      y_min: 316
      y_max: 393
      -----------------------
      

    • You can try running detection for other night/dark images.

Discover more Custom Models

For more custom DeepStack models that has been trained and ready to use, visit the Custom Models sample page on DeepStack's documentation https://docs.deepstack.cc/custom-models-samples/ .

Train your own Model

If you will like to train a custom model yourself, follow the instructions below.

  • Prepare and Annotate: Collect images on and annotate object(s) you plan to detect as detailed here
  • Train your Model: Train the model as detailed here
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Comments
  • Please confirm processing speed

    Please confirm processing speed

    Hello @OlafenwaMoses !

    First: Thank you for your work on this!!

    Now, I just replaced the standard deepstack model with yours, and the speed at which my machine is processing each frame is about half against standard deepstack model. That is: It takes almost twice the time to inspect a video frame as before.

    Is this correct ?

    On the other hand: it detects People (which is the only object I am interested in) with about twice the certainity, when compared against vanilla deepstack model. Nice !!

    Thx again!

    opened by euquiq 1
  • Annotated Images?

    Annotated Images?

    Do you have the original annotated images and would you be willing to publish or share them?

    The YOLOv5x model is being a bit slow for my use case. I would like to try to optimize this data set for my needs, but would rather not have to re-annotate the original exdark set if the work has already been done.

    Thanks

    opened by BeanBagKing 0
  • Class labels inconsistent with default model

    Class labels inconsistent with default model

    Not sure if this is an issue or feature request but noticed that the class labels of this model dont match the default model. Specifically, ExDark uses "person" vs "People" and "motorcycle" vs "Motorbike". There is also a capitalisation difference in the class names. This makes it slightly more complicated to configure client applications (e.g. Blue Iris) to filter in/out classes of objects.

    I imagine that "normalising" data could be a challenge as more custom models appear but it could also be a real advantage of deepstack if possible.

    opened by PeteBa 1
Releases(v1)
  • v1(May 5, 2021)

    A DeepStack Custom Model for object detection API to detect objects in the dark/night images. It detects the following objects

    • Bicycle
    • Boat
    • Bottle
    • Bus
    • Chair
    • Car
    • Cat
    • Cup
    • Dog
    • Motorbike
    • People
    • Table

    Download the model dark.pt from the Assets section (below) in this release.

    This Model a YOLOv5 DeepStack custom model and was trained for 50 epochs, generating a best model with the following evaluation result.

    [email protected]: 0.751 [email protected]: 0.485

    Source code(tar.gz)
    Source code(zip)
    dark.pt(169.37 MB)
Owner
MOSES OLAFENWA
Software Engineer @Microsoft , A self-Taught computer programmer, Deep Learning, Computer Vision Researcher and Developer. Creator of ImageAI.
MOSES OLAFENWA
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