http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.
변환된 중국어를 복사하여 사용하시면 됩니다.
Augmentation of Hidden Markov Chain for Complex Sequential Data in Context
Sin, Bong-Kee Korea Multimedia Society 2021 The journal of multimedia information system Vol.8 No.1
The classical HMM is defined by a parameter triple = (, A, B), where each parameter represents a collection of probability distributions: initial state, state transition and output distributions in order. This paper proposes a new stationary parameter e = (e1, e2, …, eN) where N is the number of states and et = P(|xt = i, y) for describing how an input pattern y ends in state xt = i at time t followed by nothing. It is often said that all is well that ends well. We argue here that all should end well. The paper sets the framework for the theory and presents an efficient inference and training algorithms based on dynamic programming and expectation-maximization. The proposed model is applicable to analyzing any sequential data with two or more finite segmental patterns are concatenated, each forming a context to its neighbors. Experiments on online Hangul handwriting characters have proven the effect of the proposed augmentation in terms of highly intuitive segmentation as well as recognition performance and 13.2% error rate reduction.
Feature Space Analysis of Human Gait Dynamics in Single View Video
Bong-Kee Sin,Chan-Young Kim,Ki-Ryong Kwon,Dae-Yeop Im 한국멀티미디어학회 2010 한국멀티미디어학회 국제학술대회 Vol.2010 No.-
This paper proposes a new video-based method of analyzing human gait which is a highly variable dynamic process. It captures a human gait of varying directions as a trajectory in the phase space. The proposed method includes two options of a stochastic process model and a self-organizing feature map as the tool of feature space representation and analysis. Test results show that the model is highly intuitive and we believe it can contribute to our understanding of human activity as well as gait behavior.
Text Detection in Scene Images using spatial frequency
Sin, Bong-Kee,Kim, Seon-Kyu Korean Institute of Information Scientists and Eng 2003 정보과학회논문지 : 소프트웨어 및 응용 Vol.30 No.1
장면 영상 속의 분사 영역에는 다른 부분과는 구분되는 특징적인 공간주파수가 있다. 이 특징은 직관적이며 또한 유용한 정보로서의 가치가 있다. 본 논문에서는 장면 영상에서 수평 텍스트를 찾는 방법을 제안한다. 수직 및 수평 방향으로 걸친 edge 픽셀의 빈도수와 푸리에 변환에 의한 기본 주파수의 두 가지 특징을 이용한 방법이다. 두 가지 특징을 독립적으로 활용하여 그 결과를 결합하거나 연속하여 적용하여 원하는 결과를 얻을 수 있다. 이와 같은 특징은 대체로 언어 또는 문자에 무관함을 확인하였다. 이에 추가하여 Hough 변환을 이용한 장면 속의 사각형을 탐색하였다. 여러 사람들에게 유용한 정보는 보통 강한 색상대비로 눈에 잘 띄는 색깔의 사각형 안에 씌어있는 경우가 보통이므로 사자형의 탐색함으로써 보다 효과적으로 문자를 탐색할 수 있다. It is often assumed that text regions in images are characterized by some distinctive or characteristic spatial frequencies. This feature is highly intuitive, and thus appealing as much. We propose a method of detecting horizontal texts in natural scene images. It is based on the use of two features that can be employed separately or in succession: the frequency of edge pixels across vertical and horizontal scan lines, and the fundamental frequency in the Fourier domain. We confirmed that the frequency features are language independent. Also addressed is the detection of quadrilaterals or approximate rectangles using Hough transform. Since texts that is meaningful to many viewers usually appear within rectangles with colors in high contrast to the background. Hence it is natural to assume the detection rectangles may be helpful for locating desired texts correctly in natural outdoor scene images.
RECOGNIZING HAND DIGIT GESTURES USING STOCHASTIC MODELS
Bong-Kee Sin 한국멀티미디어학회 2007 한국멀티미디어학회 국제학술대회 Vol.2007 No.-
A simple efficient method of spotting and recognizing hand gestures in video is presented using a network of hidden Markov models and dynamic programming search algorithm. The description starts from designing a set of isolated trajectory models which are stochastic and robust enough to characterize highly variable patterns like human motion, handwriting, and speech. Those models are interconnected to form a single big network termed a spotting network or a spotter that models a continuous stream of gestures and non-gestures as well. The inference over the model is based on DP. The proposed model is highly efficient and can readily be extended to a variety of recurrent pattern recognition tasks. The test result without any engineering has shown the potential for practical application. At the end of the paper we add some related experimental result that has been obtained using a different model - dynamic Bayesian network - which is also a type of stochastic model.