Search Results for author: Kazufumi Kaneda

Found 13 papers, 3 papers with code

Improving the Reliability of Semantic Segmentation of Medical Images by Uncertainty Modeling with Bayesian Deep Networks and Curriculum Learning

1 code implementation26 Aug 2021 Sora Iwamoto, Bisser Raytchev, Toru Tamaki, Kazufumi Kaneda

In this paper we propose a novel method which leverages the uncertainty measures provided by Bayesian deep networks through curriculum learning so that the uncertainty estimates are fed back to the system to resample the training data more densely in areas where uncertainty is high.

Segmentation Semantic Segmentation

An Entropy Clustering Approach for Assessing Visual Question Difficulty

1 code implementation12 Apr 2020 Kento Terao, Toru Tamaki, Bisser Raytchev, Kazufumi Kaneda, Shun'ichi Satoh

Then we use state-of-the-art methods to determine the accuracy and the entropy of the answer distributions for each cluster.

Clustering Question Answering +1

Rephrasing visual questions by specifying the entropy of the answer distribution

no code implementations10 Apr 2020 Kento Terao, Toru Tamaki, Bisser Raytchev, Kazufumi Kaneda, Shun'ichi Satoh

The proposed model rephrases a source question given with an image so that the rephrased question has the ambiguity (or entropy) specified by users.

Question Answering Visual Question Answering

On-line non-overlapping camera calibration net

no code implementations19 Feb 2020 Zhao Fangda, Toru Tamaki, Takio Kurita, Bisser Raytchev, Kazufumi Kaneda

First, successive images are fed to a PoseNet-based network to obtain ego-motion of cameras between frames.

Camera Calibration Pose Estimation

Semantic segmentation of trajectories with improved agent models for pedestrian behavior analysis

no code implementations12 Dec 2019 Toru Tamaki, Daisuke Ogawa, Bisser Raytchev, Kazufumi Kaneda

In this paper, we propose a method for semantic segmentation of pedestrian trajectories based on pedestrian behavior models, or agents.

Semantic Segmentation Trajectory Modeling

Improved Activity Forecasting for Generating Trajectories

no code implementations12 Dec 2019 Daisuke Ogawa, Toru Tamaki, Tsubasa Hirakawa, Bisser Raytchev, Kazufumi Kaneda, Ken Yoda

An efficient inverse reinforcement learning for generating trajectories is proposed based of 2D and 3D activity forecasting.

reinforcement-learning Reinforcement Learning (RL)

Biomedical Image Segmentation by Retina-like Sequential Attention Mechanism Using Only A Few Training Images

no code implementations27 Sep 2019 Shohei Hayashi, Bisser Raytchev, Toru Tamaki, Kazufumi Kaneda

In this paper we propose a novel deep learning-based algorithm for biomedical image segmentation which uses a sequential attention mechanism able to shift the focus of attention across the image in a selective way, allowing subareas which are more difficult to classify to be processed at increased resolution.

Ensemble Learning Image Segmentation +2

Semantic segmentation of trajectories with agent models

no code implementations27 Feb 2018 Daisuke Ogawa, Toru Tamaki, Bisser Raytchev, Kazufumi Kaneda

Next, using learned behavior models and a hidden Markov model, we segment a trajectory into semantic segments.

Clustering General Classification +1

Development of a Real-time Colorectal Tumor Classification System for Narrow-band Imaging zoom-videoendoscopy

no code implementations15 Dec 2016 Tsubasa Hirakawa, Toru Tamaki, Bisser Raytchev, Kazufumi Kaneda, Tetsushi Koide, Shigeto Yoshida, Hiroshi Mieno, Shinji Tanaka

A computer-aided diagnosis (CAD) system that provides an objective measure to endoscopists during colorectal endoscopic examinations would be of great value.

General Classification

Domain Adaptation with L2 constraints for classifying images from different endoscope systems

no code implementations8 Nov 2016 Toru Tamaki, Shoji Sonoyama, Takio Kurita, Tsubasa Hirakawa, Bisser Raytchev, Kazufumi Kaneda, Tetsushi Koide, Shigeto Yoshida, Hiroshi Mieno, Shinji Tanaka, Kazuaki Chayama

This paper proposes a method for domain adaptation that extends the maximum margin domain transfer (MMDT) proposed by Hoffman et al., by introducing L2 distance constraints between samples of different domains; thus, our method is denoted as MMDTL2.

Domain Adaptation

Computer-Aided Colorectal Tumor Classification in NBI Endoscopy Using CNN Features

no code implementations24 Aug 2016 Toru Tamaki, Shoji Sonoyama, Tsubasa Hirakawa, Bisser Raytchev, Kazufumi Kaneda, Tetsushi Koide, Shigeto Yoshida, Hiroshi Mieno, Shinji Tanaka

In this paper we report results for recognizing colorectal NBI endoscopic images by using features extracted from convolutional neural network (CNN).

General Classification

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