• Title/Summary/Keyword: 이미지 명세화

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Human Visual System-Aware and Low-Power Histogram Specification and Its Automation for TFT-LCDs (TFT-LCD를 위한 인간 시각 만족의 저전력 히스토그램 명세화 기법 및 자동화 연구)

  • Jin, Jeong-Chan;Kim, Young-Jin
    • Journal of KIISE
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    • v.43 no.11
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    • pp.1298-1306
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    • 2016
  • Backlight has a major factor in power consumption of TFT-LCDs which are most popular in portable devices. There have been a lot of attempts to achieve power savings by backlight dimming. At the same time, the researches have shown image compensation due to decreased brightness of a displayed image. However, existing image compensation methods such as histogram equalization have some limits in completely satisfying the human visual system (HVS)-awareness. This paper proposes an enhanced dimming technique to obtain both power saving and HVS-awareness by combining pixel compensation and histogram specification for TFT-LCDs. This method executes a search algorithm and an automation algorithm employing simplified calculations for fast image processing. Experimental results showed that the proposed method achieved significant improvement in visual satisfaction per power saving over existing backlight dimming.

A study on Robust Feature Image for Texture Classification and Detection (텍스쳐 분류 및 검출을 위한 강인한 특징이미지에 관한 연구)

  • Kim, Young-Sub;Ahn, Jong-Young;Kim, Sang-Bum;Hur, Kang-In
    • The Journal of the Institute of Internet, Broadcasting and Communication
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    • v.10 no.5
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    • pp.133-138
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    • 2010
  • In this paper, we make up a feature image including spatial properties and statistical properties on image, and format covariance matrices using region variance magnitudes. By using it to texture classification, this paper puts a proposal for tough texture classification way to illumination, noise and rotation. Also we offer a way to minimalize performance time of texture classification using integral image expressing middle image for fast calculation of region sum. To estimate performance evaluation of proposed way, this paper use a Brodatz texture image, and so conduct a noise addition and histogram specification and create rotation image. And then we conduct an experiment and get better performance over 96%.

Image Contrast Enhancement based on Histogram Decomposition and Weighting (히스토그램 분할과 가중치에 기반한 영상 콘트라스트 향상 방법)

  • Kim, Ma-Ry;Chung, Min-Gyo
    • Journal of Internet Computing and Services
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    • v.10 no.3
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    • pp.173-185
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    • 2009
  • This paper proposes two new image contrast enhancement methods, RSWHE (Recursively Separated and Weighted Histogram Equalization) and RSWHS (Recursively Separated and Weighted Histogram Specification). RSWHE is a histogram equalization method based on histogram decomposition and weighting, whereas RSWHS is a histogram specification method based on histogram decomposition and weighting. The two proposed methods work as follows: 1) decompose an input histogram based on the image's mean brightness, 2) compute the probability for the area corresponding to each sub-histogram, 3) modify the sub-histogram by weighting it with the computed probability value, 4) lastly, perform histogram equalization (in the case of RSWHE) or histogram specification (in the case of RSWHS) on the modified sub-histograms independently. Experimental results show that RSWHE and RSWHS outperform other methods in terms of contrast enhancement and mean brightness preservation as well.

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Maximum-Entropy Image Enhancement Using Brightness Mean and Variance (영상의 밝기 평균과 분산을 이용한 엔트로피 최대화 영상 향상 기법)

  • Yoo, Ji-Hyun;Ohm, Seong-Yong;Chung, Min-Gyo
    • Journal of Internet Computing and Services
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    • v.13 no.3
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    • pp.61-73
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    • 2012
  • This paper proposes a histogram specification based image enhancement method, which uses the brightness mean and variance of an image to maximize the entropy of the image. In our histogram specification step, the Gaussian distribution is used to fit the input histogram as well as produce the target histogram. Specifically, the input histogram is fitted with the Gaussian distribution whose mean and variance are equal to the brightness mean(${\mu}$) and variance(${\sigma}2$) of the input image, respectively; and the target Gaussian distribution also has the mean of the value ${\mu}$, but takes as the variance the value which is determined such that the output image has the maximum entropy. Experimental results show that compared to the existing methods, the proposed method preserves the mean brightness well and generates more natural looking images.

An Image Composition Technique using Water-Wave Image Analysis (물결영상 분석을 통한 이미지 합성기법에 관한 연구)

  • Li, Xianji;Kim, Jung-A;Ming, Shi-Hwa;Kim, Dong-Ho
    • Journal of the Korea Society of Computer and Information
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    • v.13 no.1
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    • pp.193-202
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    • 2008
  • In this study, we want to composite the source image and the target image when the environment includes water surface in the target image such as lake, sea, etc. The water surface is different from other common environment. On the water surface, the object must be reflected or refract and sometimes is deformed by the wave of water. In order to composite the object in the source image onto the water image, we analyze the water surface of the target image and let the object be synthesized realistically based on the wave of water. Our composite process consists of three steps. First. we use Shape-from-Shading technique to extract the normal vector of the water surface in the target image. Next, the source image is deformed according to the normal vector map. Finally, we composite the deformed object onto the target image.

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Component Based Face Detection for PC Camera (PC카메라 환경을 위한 컴포넌트 기반 얼굴 검출)

  • Cho, Chi-Young;Kim, Soo-Hwan
    • 한국HCI학회:학술대회논문집
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    • 2006.02a
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    • pp.988-992
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    • 2006
  • 본 논문은 PC카메라 환경에서 명암왜곡에 강인한 얼굴검출을 위한 컴포넌트 기반 얼굴검출 기법을 제시한다. 영상 내의 얼굴검출을 위해 에지(edge) 분석, 색상 분석, 형판정합(template matching), 신경망(Neural Network), PCA(Principal Component Analysis), LDA(Linear Discriminant Analysis) 등의 기법들이 사용되고 있고, 영상의 왜곡을 보정하기 위해 히스토그램 분석(평활화, 명세화), gamma correction, log transform 등의 영상 보정 방법이 사용되고 있다. 그러나 기존의 얼굴검출 방법과 영상보정 방법은 검출대상 객체의 부분적인 잡음 및 조명의 왜곡에 대처하기가 어려운 단점이 있다. 특히 PC카메라 환경에서 획득된 이미지와 같이 전면과 후면, 상하좌우에서 비추어지는 조명에 의해 검출 대상 객체의 일부분이 왜곡되는 상황이 발생될 경우 기존의 방법으로는 높은 얼굴 검출 성능을 기대할 수 없는 상황이 발생된다. 본 논문에서는 기울어진 얼굴 및 부분적으로 명암 왜곡된 얼굴을 효율적으로 검출할 수 있도록 얼굴의 좌우 대칭성을 고려한 가로방향의 대칭평균화로 얼굴검출을 위한 모델을 생성하여 얼굴검출에 사용한다. 이 방법은 부분적으로 명암왜곡된 얼굴이미지를 기존의 영상 보정기법을 적용한 것 보다 잘 표현하며, 얼굴이 아닌 후보는 비얼굴 이미지의 형상을 가지게 하는 특성이 있다.

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MPEG-4 Authoring System Based on Extended BIFS for Object Synchronization (객체 동기화를 위한 확장된 BIFS 기반의 MPEG-4 저작 시스템)

  • 성승규;이명원
    • Proceedings of the Korean Information Science Society Conference
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    • 2002.10d
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    • pp.142-144
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    • 2002
  • MPEG-4 시스템 표준은 오디오, 비디오, 이미지 등 다양한 멀티미디어 객체들을 통합하여 관리하고 전송하며 BIFS는 이러한 객체들의 표시 방법과 특성을 지정하고 하나의 장면을 구성할 수 있도록 해주는 기술 언어이다. 멀티미디어 데이터는 시간과 밀접한 관계를 가지고 있어서 객체들간의 시간 관계가 명확히 기술되어야 한다. 그러나 BIFS 명세에서는 하나의 객체에 대한 시간정보만 기술 할 수 있고 객체간 관계는 정의하고 있지 않다. 이에 본 논문은 객체간 동기화를 위한 시간관계 정보를 저장하는 노드를 BIFS에 추가하여 각 객체를 동기화 할 수 있도록 하는 확장된 BIFS를 정의하고 이를 기반으로 MPEG-4 저작 시스템을 구성하였다. 이로써 객체 동기화를 위한 별도의 구조를 추가해야하는 부담을 줄이고 MPEG-4 시스템 자체가 동기화 문제를 해결할 수 있다. MPEG-4 저작도구의 타임라인 바는 제작되는 컨텐츠 내의 멀티미디어 데이터들의 시간관계를 시각적으로 표현하고 시간관계 모델 조건에 따른 Group 노드를 생성한다.

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Object Detection based on Mask R-CNN from Infrared Camera (적외선 카메라 영상에서의 마스크 R-CNN기반 발열객체검출)

  • Song, Hyun Chul;Knag, Min-Sik;Kimg, Tae-Eun
    • Journal of Digital Contents Society
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    • v.19 no.6
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    • pp.1213-1218
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    • 2018
  • Recently introduced Mask R - CNN presents a conceptually simple, flexible, general framework for instance segmentation of objects. In this paper, we propose an algorithm for efficiently searching objects of images, while creating a segmentation mask of heat generation part for an instance which is a heating element in a heat sensed image acquired from a thermal infrared camera. This method called a mask R - CNN is an algorithm that extends Faster R - CNN by adding a branch for predicting an object mask in parallel with an existing branch for recognition of a bounding box. The mask R - CNN is added to the high - speed R - CNN which training is easy and fast to execute. Also, it is easy to generalize the mask R - CNN to other tasks. In this research, we propose an infrared image detection algorithm based on R - CNN and detect heating elements which can not be distinguished by RGB images. As a result of the experiment, a heat-generating object which can not be discriminated from Mask R-CNN was detected normally.