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[Author] Hideaki IMAI(2hit)

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  • Robustness of Deep Learning Models in Dermatological Evaluation: A Critical Assessment

    Sourav MISHRA  Subhajit CHAUDHURY  Hideaki IMAIZUMI  Toshihiko YAMASAKI  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2020/12/22
      Vol:
    E104-D No:3
      Page(s):
    419-429

    Our paper attempts to critically assess the robustness of deep learning methods in dermatological evaluation. Although deep learning is being increasingly sought as a means to improve dermatological diagnostics, the performance of models and methods have been rarely investigated beyond studies done under ideal settings. We aim to look beyond results obtained on curated and ideal data corpus, by investigating resilience and performance on user-submitted data. Assessing via few imitated conditions, we have found the overall accuracy to drop and individual predictions change significantly in many cases despite of robust training.

  • A Nonlinear Spectrum Estimation System Using RBF Network Modified for Signal Processing

    Hideaki IMAI  Yoshikazu MIYANAGA  Koji TOCHINAI  

     
    PAPER

      Vol:
    E80-A No:8
      Page(s):
    1460-1466

    This paper proposes a nonlinear signal processing by using a three layered network which is trained with self-organized clustering and supervised learning. The network consists of three layers, i.e., self-organized layer, an evaluation layer and an output layer. Since the evaluation layer is designed as a simple perceptron network and the output layer is designed as a fixed weight linear node, the training complexity is the same as a conventional one consisting of self-organized clustering and a simple perceptron network. In other words, quite high speed training can be realized. Generally speaking, since the data range is arbitrary large in signal procession, the network shoulk cover this range and output a value as accurately as possible. However, it may be hard for only a node in the network to output these data. Instead of this mechanism, if this dynamic range is covered by using several nodes, the complexity of each node is reduced and the associated range is also limited. This results on the higher performance of the network than conventional RBFs. This paper introduces a new non-linear spectrum estimation which consists of LPC analysis and RBF network. It is shown that accuracy spectrum envelopes can be obtained since a new RBF network can estimate some nonlinearities in a speech production.