Keyword Search Result

[Keyword] visual information processing(3hit)

1-3hit
  • Eyeblink Activity during Identification of Katakana Characters Viewed through a Restricted Visual Field

    Kiichi TANABE  

     
    LETTER-Human Communications

      Vol:
    E87-A No:8
      Page(s):
    2189-2191

    This paper analyzes the timing of eyeblink during visual identification of katakana characters on a display, which were presented under the constraint of a restricted visual field (R.V.F.). Blinks frequently occurred when the subject slowly brought the R.V.F. near a feature point (e.g., terminal point, crossing point).

  • Computational Sensors -- Vision VLSI

    Kiyoharu AIZAWA  

     
    INVITED SURVEY PAPER

      Vol:
    E82-D No:3
      Page(s):
    580-588

    Computational sensor (smart sensor, vision chip in other words) is a very small integrated system, in which processing and sensing are unified on a single VLSI chip. It is designed for a specific targeted application. Research activities of computational sensor are described in this paper. There have been quite a few proposals and implementations in computational sensors. Firstly, their approaches are summarized from several points of view, such as advantage vs. disadvantage, neural vs. functional, architecture, analog vs. digital, local vs. global processing, imaging vs. processing, new processing paradigms. Then, several examples are introduced which are spatial processings, temporal processings, A/D conversions, programmable computational sensors. Finally, the paper is concluded.

  • AVHRR Image Segmentation Using Modified Backpropagation Algorithm

    Tao CHEN  Mikio TAKAGI  

     
    PAPER-Image Processing

      Vol:
    E77-D No:4
      Page(s):
    490-497

    Analysis of satellite images requires classificatio of image objects. Since different categories may have almost the same brightness or feature in high dimensional remote sensing data, many object categories overlap with each other. How to segment the object categories accurately is still an open question. It is widely recognized that the assumptions required by many classification methods (maximum likelihood estimation, etc.) are suspect for textural features based on image pixel brightness. We propose an image feature based neural network approach for the segmentation of AVHRR images. The learning algoriothm is a modified backpropagation with gain and weight decay, since feedforward networks using the backpropagation algorithm have been generally successful and enjoy wide popularity. Destructive algorithms that adapt the neural architecture during the training have been developed. The classification accuracy of 100% is reached for a validation data set. Classification result is compared with that of Kohonen's LVQ and basic backpropagation algorithm based pixel-by-pixel method. Visual investigation of the result images shows that our method can not only distinguish the categories with similar signatures very well, but also is robustic to noise.

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