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A python package to interact with Inter-American Development Bank machine learning models to automatic label elements for iRAP certification

Project description

Downloads Quality Gate Status analytics image (flat) analytics

VIAsegura

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Project Description


VIAsegura is an API that helps to use artificial intelligence models developed by the Inter-American Development Bank to automatically tag items on the streets. The tags it places are some of those needed to implement the iRAP road safety methodology.

To use it you must contact the Inter-American Development Bank to obtain the credentials that give access to the models with which the API works.

These models require images with the specifications of the iRAP projects. This means that they have been taken every 20 meters along the entire path to be analyzed. In addition, some of the models require images to be taken from the front and others from the side of the car. The models yield 1 result for each model for groups of 5 images or less.

So far, 15 models compatible with the iRAP labeling specifications have been developed and are specified in the table below.

Model Name Description Type of Image Classes
delineation Adequacy of road lines Frontal 2
street lighting Presence of street lighting Frontal 2
carriageway Carriageway label for section Frontal 2
service road Presence of a service road Frontal 2
road condition Condition of the road surface Frontal 3
skid resistance Skidding resistance Frontal 3
upgrade cost Influence surroundings on cost of major works Frontal 3
speed management Presence of features to reduce operating speed Frontal 3
bicycle facility Presence of facilities for bicyclists Frontal 2
quality of curve Influence surroundings on cost of major works Frontal 2
vehicle parking Influence surroundings on cost of major works Frontal 2
property access points Influence surroundings on cost of major works Frontal 2
area_type Influence surroundings on cost of major works Lateral 2
land use Influence surroundings on cost of major works Lateral 4
number of lanes Influence surroundings on cost of major works Frontal 5

Some of the models can identify all the classes or categories, others can help you sort through the available options.

Main Features


Some of the features now available are as follows:

  • Scoring using the models already developed
  • Grouping by groups of 5 images from an image list
  • Download models directly into the root of the package

Instalation


To install you can use the following commands

pip install viasegura

Then to download the models use the following commands

from viasegura import download_models

download_models(url = <signed_url>)

Or alternativily

from viasegura import download_models

download_models(aws_access_key = <aws_access_key>, signature = <signature>, expires = <expiration_time>)

To obtain the corresponding credentials for downloading the models, please contact the Inter-American Development Bank.

You can also clone the repository but remember that the package is configured to download the models and place them in the root of the environment. You can change the locations manually as follows

from viasegura import download_models

download_models(url = <signed_url>, system_path = <new_working_path>)

Or alternativily

from viasegura import download_models

download_models(aws_access_key = <aws_access_key>, signature = <signature>, expires = <expiration_time>, system_path = <new_working_path>)

Remember to put that path every time you instantiate a model so that you can find the artifacts you need to run them.

Using the Models


In order to make the instance of a model you can use the following commands

from viasegura import ModelLabeler

labeler = ModelLabeler(<type>) 

You can use either "frontal" or "lateral" tag in order to use the group of models desired (see table above)

For example, we can see both instance types:

from viasegura import ModelLabeler

frontal_labeler = ModelLabeler('frontal') 

or

from viasegura import ModelLabeler

lateral_labeler = ModelLabeler('lateral') 

Also you can especify which models to load using the parameter model filter and the name of the models to use, (see the table above):

from viasegura import ModelLabeler

frontal_labeler = ModelLabeler('frontal', model_filter = ['delineation', 'street_lighting', 'carriageway']) 

In addition, you can make it work using the GPU specifying the device where the models are going to run, for example

from viasegura import ModelLabeler

frontal_labeler = ModelLabeler('frontal', device='/device:GPU:0') 

You can modify the devices used according to the TensorFlow documentation regarding GPU usage (see https://www.tensorflow.org/guide/gpu)

Autores


This package has been developed by:

Jose Maria Marquez Blanco
Joan Alberto Cerretani

License

The distribution of this software is according with the following license

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