Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Marie Sano is active.

Publication


Featured researches published by Marie Sano.


Optics Express | 2015

Random phase-free kinoform for large objects.

Tomoyoshi Shimobaba; Takashi Kakue; Yutaka Endo; Ryuji Hirayama; Daisuke Hiyama; Satoki Hasegawa; Yuki Nagahama; Marie Sano; Minoru Oikawa; Takashige Sugie; Tomoyoshi Ito

We propose a random phase-free kinoform for large objects. When not using the random phase in kinoform calculation, the reconstructed images from the kinoform are heavy degraded, like edge-only preserved images. In addition, the kinoform cannot record an entire object that exceeds the kinoform size because the object light does not widely spread. In order to avoid this degradation and to widely spread the object light, the random phase is applied to the kinoform calculation; however, the reconstructed image is contaminated by speckle noise. In this paper, we overcome this problem by using our random phase-free method and error diffusion method.


Optics Communications | 2018

Computational ghost imaging using deep learning

Tomoyoshi Shimobaba; Yutaka Endo; Takashi Nishitsuji; Takayuki Takahashi; Yuki Nagahama; Satoki Hasegawa; Marie Sano; Ryuji Hirayama; Takashi Kakue; Atsushi Shiraki; Tomoyoshi Ito

Abstract Computational ghost imaging (CGI) is a single-pixel imaging technique that exploits the correlation between known random patterns and the measured intensity of light transmitted (or reflected) by an object. Although CGI can obtain two- or three-dimensional images with a single or a few bucket detectors, the quality of the reconstructed images is reduced by noise due to the reconstruction of images from random patterns. In this study, we improve the quality of CGI images using deep learning. A deep neural network is used to automatically learn the features of noise-contaminated CGI images. After training, the network is able to predict low-noise images from new noise-contaminated CGI images.


Applied Optics | 2017

Holographic microinformation hiding

Tomoyoshi Shimobaba; Yutaka Endo; Ryuji Hirayama; Daisuke Hiyama; Yuki Nagahama; Satoki Hasegawa; Marie Sano; Takayuki Takahashi; Takashi Kakue; Minoru Oikawa; Tomoyoshi Ito

We propose a holographic microinformation hiding scheme in which the embedding information to be embedded is small and imperceptible to the human eyes. This scheme converts the embedding information into a complex amplitude via scaled diffraction. The complex amplitude of the reduced embedding information is added to the complex amplitude of the host image, followed by conversion to a hologram. The reduced embedded information is inconspicuous from the hologram during the reconstruction process; however, the reduction leads to the degradation of the embedded image quality. Therefore, to improve the quality of the embedded image quality, we employ iterative optimization and the time averaging effect of multiple holograms.


Applied Optics | 2016

Color computer-generated hologram generation using the random phase-free method and color space conversion

Tomoyoshi Shimobaba; Michal Makowski; Yuki Nagahama; Yutaka Endo; Ryuji Hirayama; Daisuke Hiyama; Satoki Hasegawa; Marie Sano; Takashi Kakue; Minoru Oikawa; Takashige Sugie; Naoki Takada; Tomoyoshi Ito

We propose two calculation methods of generating color computer-generated holograms (CGHs) with the random phase-free method and color space conversion in order to improve the image quality and accelerate the calculation. The random phase-free method improves the image quality in monochrome CGH, but it is not performed in color CGH. We first aimed to improve the image quality of color CGH using the random phase-free method and then to accelerate the color CGH generation with a combination of the random phase-free method and color space conversion method, which accelerates the color CGH calculation due to down-sampling of the color components converted by color space conversion. To overcome the problem of image quality degradation that occurs due to the down-sampling of random phases, the combination of the random phase-free method and color space conversion method improves the quality of reconstructed images and accelerates the color CGH calculation. We demonstrated the effectiveness of the proposed method in simulation, and in this paper discuss its application to lensless zoomable holographic projection.


Digital Holography & 3-D Imaging Meeting (2015), paper DW2A.10 | 2015

Portable and Low-Cost Digital Holographic Microscope using RGB LED Illumination

Yutaka Endo; Junichi Itoi; Tomoyoshi Shimobaba; Marie Sano; Takashi Kakue; Tomoyoshi Ito

In this study, we developed the portable and low-cost digital holographic microscope (DHM) using RGB light emitting diode (LED) illumination. The RGB illumination is used to measure profiles of each color channel. This DHM system adopts the setup for Gabor holography, an LED, and a CMOS sensor on a commercial web camera, which makes the DHM system simple and low-cost.


Optics Communications | 2015

Improvement of the image quality of random phase-free holography using an iterative method

Tomoyoshi Shimobaba; Takashi Kakue; Yutaka Endo; Ryuji Hirayama; Daisuke Hiyama; Satoki Hasegawa; Yuki Nagahama; Marie Sano; Minoru Oikawa; Takashige Sugie; Tomoyoshi Ito


Optics Communications | 2016

Optical encryption for large-sized images

Takuho Sanpei; Tomoyoshi Shimobaba; Takashi Kakue; Yutaka Endo; Ryuji Hirayama; Daisuke Hiyama; Satoki Hasegawa; Yuki Nagahama; Marie Sano; Minoru Oikawa; Takashige Sugie; Tomoyoshi Ito


Applied Optics | 2017

Convolutional neural network-based data page classification for holographic memory

Tomoyoshi Shimobaba; Naoki Kuwata; Mizuha Homma; Takayuki Takahashi; Yuki Nagahama; Marie Sano; Satoki Hasegawa; Ryuji Hirayama; Takashi Kakue; Atsushi Shiraki; Naoki Takada; Tomoyoshi Ito


Optics Communications | 2018

Fast, large-scale hologram calculation in wavelet domain

Tomoyoshi Shimobaba; Kyoji Matsushima; Takayuki Takahashi; Yuki Nagahama; Satoki Hasegawa; Marie Sano; Ryuji Hirayama; Takashi Kakue; Tomoyoshi Ito


arXiv: Computer Vision and Pattern Recognition | 2017

Deep-learning-based data page classification for holographic memory.

Tomoyoshi Shimobaba; Naoki Kuwata; Mizuha Homma; Takayuki Takahashi; Yuki Nagahama; Marie Sano; Satoki Hasegawa; Ryuji Hirayama; Takashi Kakue; Atsushi Shiraki; Naoki Takada; Tomoyoshi Ito

Collaboration


Dive into the Marie Sano's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge