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out-of-the-box computer vision

Project description


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Computer vision deep learning models: effective & useable out-of-the-bottle.

Step into the cellar and select a model for computer visions.


Object Detection

import rtsp
import huasca

obj = huasca.detection.TinyYolo()

_image = rtsp.fetch_image()

annotated,classes,scores = obj.process(_image)'test.png')

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Files for huasca, version 0.0.3
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Filename, size huasca-0.0.3-py3-none-any.whl (59.3 MB) File type Wheel Python version py3 Upload date Hashes View

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