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A Study on Visual Behavior for Presenting Consumer-Oriented Information on an Online Fashion Store

  • Kim, Dahyun;Lee, Seunghee
    • Journal of the Korean Society of Clothing and Textiles
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    • v.44 no.5
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    • pp.789-809
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    • 2020
  • Growth in online channels has created fierce competition; consequently, retailers have to invest an increasing amount of effort into attracting consumers. In this study, eye-tracking technology examined consumers' visual behavior to gain an understanding of information searching behavior in exploring product information for fashion products. Product attribute information was classified into two image-based elements (model image information and detail image information) and two text-based elements (basic text information, detail text information), after which consumers' visual behavior for each information element was analyzed. Furthermore, whether involvement affects consumers' information search behavior was investigated. The results demonstrated that model image information attracted visual attention the quickest, while detail text information and model image information received the most visual attention. Additionally, high-involvement consumers tended to pay more attention to detailed information while low-involvement consumers tended to pay more attention to image-based and basic information. This study is expected to help broaden the understanding of consumer behavior and provide implications for establishing strategies on how to efficiently organize product information for online fashion stores.

Ship Number Recognition Method Based on An improved CRNN Model

  • Wenqi Xu;Yuesheng Liu;Ziyang Zhong;Yang Chen;Jinfeng Xia;Yunjie Chen
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.17 no.3
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    • pp.740-753
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    • 2023
  • Text recognition in natural scene images is a challenging problem in computer vision. The accurate identification of ship number characters can effectively improve the level of ship traffic management. However, due to the blurring caused by motion and text occlusion, the accuracy of ship number recognition is difficult to meet the actual requirements. To solve these problems, this paper proposes a dual-branch network based on the CRNN identification network. The network couples image restoration and character recognition. The CycleGAN module is used for blur restoration branch, and the Pix2pix module is used for character occlusion branch. The two are coupled to reduce the impact of image blur and occlusion. Input the recovered image into the text recognition branch to improve the recognition accuracy. After a lot of experiments, the model is robust and easy to train. Experiments on CTW datasets and real ship maps illustrate that our method can get more accurate results.

Representative Batch Normalization for Scene Text Recognition

  • Sun, Yajie;Cao, Xiaoling;Sun, Yingying
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.16 no.7
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    • pp.2390-2406
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    • 2022
  • Scene text recognition has important application value and attracted the interest of plenty of researchers. At present, many methods have achieved good results, but most of the existing approaches attempt to improve the performance of scene text recognition from the image level. They have a good effect on reading regular scene texts. However, there are still many obstacles to recognizing text on low-quality images such as curved, occlusion, and blur. This exacerbates the difficulty of feature extraction because the image quality is uneven. In addition, the results of model testing are highly dependent on training data, so there is still room for improvement in scene text recognition methods. In this work, we present a natural scene text recognizer to improve the recognition performance from the feature level, which contains feature representation and feature enhancement. In terms of feature representation, we propose an efficient feature extractor combined with Representative Batch Normalization and ResNet. It reduces the dependence of the model on training data and improves the feature representation ability of different instances. In terms of feature enhancement, we use a feature enhancement network to expand the receptive field of feature maps, so that feature maps contain rich feature information. Enhanced feature representation capability helps to improve the recognition performance of the model. We conducted experiments on 7 benchmarks, which shows that this method is highly competitive in recognizing both regular and irregular texts. The method achieved top1 recognition accuracy on four benchmarks of IC03, IC13, IC15, and SVTP.

Inverted Index based Modified Version of K-Means Algorithm for Text Clustering

  • Jo, Tae-Ho
    • Journal of Information Processing Systems
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    • v.4 no.2
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    • pp.67-76
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    • 2008
  • This research proposes a new strategy where documents are encoded into string vectors and modified version of k means algorithm to be adaptable to string vectors for text clustering. Traditionally, when k means algorithm is used for pattern classification, raw data should be encoded into numerical vectors. This encoding may be difficult, depending on a given application area of pattern classification. For example, in text clustering, encoding full texts given as raw data into numerical vectors leads to two main problems: huge dimensionality and sparse distribution. In this research, we encode full texts into string vectors, and modify the k means algorithm adaptable to string vectors for text clustering.

Improving Text Categorization with High Quality Bigrams (고품질 바이그램을 이용한 문서 범주화 성능 향상)

  • Lee, Chan-Do;Tan, Chade-Meng;Wang, Yuan-Fang
    • The KIPS Transactions:PartB
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    • v.9B no.4
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    • pp.415-420
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    • 2002
  • This paper presents an efficient text categorization algorithm that generates high quality bigrams by using the information gain metric, combined with various frequency thresholds. The bigrams, along with unigrams, are then given as features to a Naive Bayes classifier. The experimental results suggest that the bigrams, while small in number, can substantially contribute to improving text categorization. Upon close examination of the results, we conclude that the algorithm is most successful in correctly classifying more positive documents, but may cause more negative documents to be classified incorrectly.

The Prefix Array for Multimedia Information Retrieval in the Real-Time Stenograph (실시간 속기 자막 환경에서 멀티미디어 정보 검색을 위한 Prefix Array)

  • Kim, Dong-Joo;Kim, Han-Woo
    • Proceedings of the KIEE Conference
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    • 2006.10c
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    • pp.521-523
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    • 2006
  • This paper proposes an algorithm and its data structure to support real-time full-text search for the streamed or broadcasted multimedia data containing real-time stenograph text. Since the traditional indexing method used at information retrieval area uses the linguistic information, there is a heavy cost. Therefore, we propose the algorithm and its data structure based on suffix array, which is a simple data structure and has low space complexity. Suffix array is useful frequently to search for huge text. However, subtitle text of multimedia data is to get longer by time. Therefore, suffix array must be reconstructed because subtitle text is continually changed. We propose the data structure called prefix array and search algorithm using it.

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A Chinese Spam Filter Using Keyword and Text-in-Image Features

  • Chen, Ying-Nong;Wang, Cheng-Tzu;Lo, Chih-Chung;Han, Chin-Chuan;Fana, Kuo-Chin
    • Proceedings of the Korean Society of Broadcast Engineers Conference
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    • 2009.01a
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    • pp.32-37
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    • 2009
  • Recently, electronic mail(E-mail) is the most popular communication manner in our society. In such conventional environments, spam increasingly congested in Internet. In this paper, Chinese spam could be effectively detected using text and image features. Using text features, keywords and reference templates in Chinese mails are automatically selected using genetic algorithm(GA). In addition, spam containing a promotion image is also filtered out by detecting the text characters in images. Some experimental results are given to show the effectiveness of our proposed method.

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Inverted Index based Modified Version of KNN for Text Categorization

  • Jo, Tae-Ho
    • Journal of Information Processing Systems
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    • v.4 no.1
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    • pp.17-26
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    • 2008
  • This research proposes a new strategy where documents are encoded into string vectors and modified version of KNN to be adaptable to string vectors for text categorization. Traditionally, when KNN are used for pattern classification, raw data should be encoded into numerical vectors. This encoding may be difficult, depending on a given application area of pattern classification. For example, in text categorization, encoding full texts given as raw data into numerical vectors leads to two main problems: huge dimensionality and sparse distribution. In this research, we encode full texts into string vectors, and modify the supervised learning algorithms adaptable to string vectors for text categorization.

Automatic Text Categorization Using Term Information of Anchor Text (Anchor Text의 단어 정보를 이용한 자동 문서 범주화)

  • Heo, Hee-keun;Han, Gi-deok;Jung, Sung-won;Lim, Sung-shin;Kwon, Hyuk-chul
    • Proceedings of the Korea Information Processing Society Conference
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    • 2004.05a
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    • pp.665-668
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    • 2004
  • 최근의 웹 문서는 텍스트뿐만 아니라 이미지, 사운드 등 다른 여러 형태로 표현되고 있어서 텍스트의 비중이 낮아지고 있다. 그래서 문서 내에서 일정량 이상의 단어 추출이 어려운 문서들에 대해서 기존의 단어 정보만을 이용한 문서 범주화 방법은 좋은 성능을 기대할 수 없다. 그래서 본 논문은 Anchor Text 단어 정보의 자질 적합성 판단에 의한 새로운 자동 문서 범주화 모델을 제안한다. 문서 범주화 모델로는 베이지언 확률 모델을 이용하였으며, 카이제곱 통계량을 사용하여 자질을 선정하였다. 문서 내에서 추출된 단어 자질들이 해당 문서를 판단하는데 부족하다고 판단되면 문서의 링크정보를 이용하여 연결된 문서의 단어 자질과 Anchor Text의 단어 자질을 반영함으로써 성능을 향상시킨다.

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Research on Keyword-Overlap Similarity Algorithm Optimization in Short English Text Based on Lexical Chunk Theory

  • Na Li;Cheng Li;Honglie Zhang
    • Journal of Information Processing Systems
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    • v.19 no.5
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    • pp.631-640
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    • 2023
  • Short-text similarity calculation is one of the hot issues in natural language processing research. The conventional keyword-overlap similarity algorithms merely consider the lexical item information and neglect the effect of the word order. And some of its optimized algorithms combine the word order, but the weights are hard to be determined. In the paper, viewing the keyword-overlap similarity algorithm, the short English text similarity algorithm based on lexical chunk theory (LC-SETSA) is proposed, which introduces the lexical chunk theory existing in cognitive psychology category into the short English text similarity calculation for the first time. The lexical chunks are applied to segment short English texts, and the segmentation results demonstrate the semantic connotation and the fixed word order of the lexical chunks, and then the overlap similarity of the lexical chunks is calculated accordingly. Finally, the comparative experiments are carried out, and the experimental results prove that the proposed algorithm of the paper is feasible, stable, and effective to a large extent.