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Real-Time Indoor Scene Description for the Visually Impaired Using Autoencoder Fusion Strategies with Visible Cameras.

Salim MalekFarid MelganiMohamed Lamine MekhalfiYakoub Bazi
Published in: Sensors (Basel, Switzerland) (2017)
This paper describes three coarse image description strategies, which are meant to promote a rough perception of surrounding objects for visually impaired individuals, with application to indoor spaces. The described algorithms operate on images (grabbed by the user, by means of a chest-mounted camera), and provide in output a list of objects that likely exist in his context across the indoor scene. In this regard, first, different colour, texture, and shape-based feature extractors are generated, followed by a feature learning step by means of AutoEncoder (AE) models. Second, the produced features are fused and fed into a multilabel classifier in order to list the potential objects. The conducted experiments point out that fusing a set of AE-learned features scores higher classification rates with respect to using the features individually. Furthermore, with respect to reference works, our method: (i) yields higher classification accuracies, and (ii) runs (at least four times) faster, which enables a potential full real-time application.
Keyphrases
  • deep learning
  • machine learning
  • convolutional neural network
  • air pollution
  • particulate matter
  • health risk
  • molecular dynamics
  • human health
  • magnetic resonance imaging
  • heavy metals
  • high resolution