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Assessing car damage with convolution neural networks for a personal auto claims expedition use case

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Car Damage Detective

Assessing Car Damage with Convolutional Neural Networks

Created a proof of concept to expedite the personal auto claims process with computer vision and deep learning. Identified damage location and severity to accuracies of 79% and 71% respectively, comparable to human performance. Trained a pipeline of convolutional neural networks using transfer learning on VGG16 with Keras and Theano to classify damage. Deployed consumer-facing web app with Flask and Bootstrap for real-time car damage evaluations. Data scraped from Google Images using Selenium, hand-labeled for classification and supplemented with the Stanford Car Image Dataset.

  • Blog post - Coming soon!
  • Web app - Car Damage Detective - Currently unavailable
  • Presentation

Access to the image dataset is made available under the Open Data Commons Attribution License: https://opendatacommons.org/licenses/by/1.0/.

Credit for the Google Images scraper goes to Ian London's fantastic General Image Classifier project.

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Assessing car damage with convolution neural networks for a personal auto claims expedition use case

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