State-of-the-art Computer Vision and Object Detection for TensorFlow.


Keywords
computer-vision, object-detection, state-of-the-art, tensorflow
License
Other
Install
pip install sightseer==1.0.7

Documentation



PyPI PyPI - License

State-of-the-art Computer Vision and Object Detection for TensorFlow.

Made by Rishabh Anand • https://rish-16.github.io

sightseer provides state-of-the-art general-purpose architectures (YOLOv3, MaskRCNN, Fast/Faster RCNN, SSD...) for Computer Vision and Object Detection tasks with 30+ pretrained models written in TensorFlow 1.15.

Installation

sightseer is written in Python 3.5+ and TensorFlow 1.15.

Ideally, sightseer should be installed in a virtual environments. If you're unfamiliar with Python virtual environments, check out this tutorial on getting started.

Via PyPi

To use sightseer, you must first have TensorFlow installed. To do so, follow the instructions on the TensorFlow installation page.

When your virtual environment is set up with TensorFlow, you can install sightseer using pip:

pip install sightseer

Model Clients (as of now)

  1. YOLOv3Client (Darknet by Joseph Redmon)

Facebook AI's Mask R-CNN will be out in the v1.2.0 release. For more information on model release, check out the Roadmap.

Components of sightseer

The package comes with 4 major components that help with different parts of the object detection process all the way from preparing your raw data to getting predictions and displaying them.

Component Description
Sightseer Obtains image data or video footage
Proc Provides image/frame-wise annotation and inter-format conversion tools
Zoo Stores the wrappers over all state-of-the-art models and configs
Serve Provides deployment and model serving protocols and services

If not using custom datasets, Sightseer and Zoo are the submodules majorly used for generic predictions from pre-trained models. When there is custom data involved, you can use Proc to annotate your datasets and even convert them between XML/JSON/CSV/TFRecord formats.

Serve is an experimental productionising submodule that helps deploy your models on cloud services like AWS and GCP. For more details on future tools and services, check out the Roadmap.

Features

Footage or raw images can be rendered using Sightseer before being ingested into models or further preprocessed.

1a. Loading images

from sightseer import Sightseer

ss = Sightseer()
image = ss.load_image("path/to/image") # return numpy array representation of image

1b. Loading videos

from sightseer import Sightseer

ss = Sightseer()
frames = ss.load_vidsource("path/to/video") # returns nested array of frames

Support for video, webcam footage, and screen recording will be out in the coming v1.2.0 release.

2. Using models from sightseer.zoo

Once installed, any model offered by sightseer can be accessed in less than 10 lines of code. For instance, the code to use the YOLOv3 (Darknet) model is as follows:

from sightseer import Sightseer
from sightseer.zoo import YOLOv3Client

yolo = YOLOv3Client()
yolo.load_model() # downloads weights

# loading image from local system
ss = Sightseer()
image = ss.load_image("./assets/road.jpg")

# getting labels, confidence scores, and bounding box data
preds, pred_img = yolo.predict(image, return_img=True)
ss.render_image(pred_img)

To run the model on frames from a video, you can use the framewise_predict method:

from sightseer import Sightseer
from sightseer.zoo import YOLOv3Client

yolo = YOLOv3Client()
yolo.load_model() # downloads weights

# loading video from local system
ss = Sightseer()
frames = ss.load_vidsource("./assets/video.mp4")

"""
For best results, run on a GPU
"""
# getting labels, confidence scores, and bounding box data
preds, pred_frames = yolo.framewise_predict(frames)
ss.render_footage(pred_frames) # plays the video and saves the footage

The module can even be repurposed into a Command-line Interface (CLI) app using the argparse library.

Contributing

Suggestions, improvements, and enhancements are always welcome! If you have any issues, please do raise one in the Issues section. If you have an improvement, do file an issue to discuss the suggestion before creating a PR.

All ideas – no matter how outrageous – welcome!

Before committing, please check the Roadmap to see if proposed features are already in-development or not.

Note: Please commit all changes to the development experimentation branch instead of master.

Licence

Apache Licencse 2.0