• Title/Summary/Keyword: Text data

Search Result 2,953, Processing Time 0.036 seconds

삼성 전자의 Smart DLS 국내구축 사례

  • 고홍승
    • Proceedings of the Korea Database Society Conference
    • /
    • 1998.09a
    • /
    • pp.279-292
    • /
    • 1998
  • 4. 특징 및 도입효과 4-1. 구축시스템 특징 $.$다양한 입력자료에 대한 원문 검색 - Image, Video, 탁본, WP 등 ㆍ국내 최초로 개발된 OTRS(OCR-generated Text Retrieval System)시스템 -자료 속의 핵심어 위치를 이미지 상에서 확인 ㆍVR 시스템을 통한 WEB Service $.$ IR 시스템을 통한 색인어 검색 및 조건에 의한 검색(중략)

  • PDF

Oracle′s KMS Solution Framework

  • Eok, Choe-Seung
    • Proceedings of the Korea Database Society Conference
    • /
    • 1998.09a
    • /
    • pp.347-364
    • /
    • 1998
  • Oracle's KM Technology ㆍCore Technologies - Oracle Application Server 4.0 JCORBA Cartridge, JTS - Oracle 8.1 JavaVM, Java Stored Procedure, CORBA/ORB, IIOP - ConText Carridge 8.1 - Enterprise Scalability and Performance - Open SQL Query Layer - Fully-Extensible Object Model for custom solutions ㆍNext Plan - Oracle Application Server 4.1 EJB Cartridge(omitted)

  • PDF

The way to make training data for deep learning model to recognize keywords in product catalog image at E-commerce (온라인 쇼핑몰에서 상품 설명 이미지 내의 키워드 인식을 위한 딥러닝 훈련 데이터 자동 생성 방안)

  • Kim, Kitae;Oh, Wonseok;Lim, Geunwon;Cha, Eunwoo;Shin, Minyoung;Kim, Jongwoo
    • Journal of Intelligence and Information Systems
    • /
    • v.24 no.1
    • /
    • pp.1-23
    • /
    • 2018
  • From the 21st century, various high-quality services have come up with the growth of the internet or 'Information and Communication Technologies'. Especially, the scale of E-commerce industry in which Amazon and E-bay are standing out is exploding in a large way. As E-commerce grows, Customers could get what they want to buy easily while comparing various products because more products have been registered at online shopping malls. However, a problem has arisen with the growth of E-commerce. As too many products have been registered, it has become difficult for customers to search what they really need in the flood of products. When customers search for desired products with a generalized keyword, too many products have come out as a result. On the contrary, few products have been searched if customers type in details of products because concrete product-attributes have been registered rarely. In this situation, recognizing texts in images automatically with a machine can be a solution. Because bulk of product details are written in catalogs as image format, most of product information are not searched with text inputs in the current text-based searching system. It means if information in images can be converted to text format, customers can search products with product-details, which make them shop more conveniently. There are various existing OCR(Optical Character Recognition) programs which can recognize texts in images. But existing OCR programs are hard to be applied to catalog because they have problems in recognizing texts in certain circumstances, like texts are not big enough or fonts are not consistent. Therefore, this research suggests the way to recognize keywords in catalog with the Deep Learning algorithm which is state of the art in image-recognition area from 2010s. Single Shot Multibox Detector(SSD), which is a credited model for object-detection performance, can be used with structures re-designed to take into account the difference of text from object. But there is an issue that SSD model needs a lot of labeled-train data to be trained, because of the characteristic of deep learning algorithms, that it should be trained by supervised-learning. To collect data, we can try labelling location and classification information to texts in catalog manually. But if data are collected manually, many problems would come up. Some keywords would be missed because human can make mistakes while labelling train data. And it becomes too time-consuming to collect train data considering the scale of data needed or costly if a lot of workers are hired to shorten the time. Furthermore, if some specific keywords are needed to be trained, searching images that have the words would be difficult, as well. To solve the data issue, this research developed a program which create train data automatically. This program can make images which have various keywords and pictures like catalog and save location-information of keywords at the same time. With this program, not only data can be collected efficiently, but also the performance of SSD model becomes better. The SSD model recorded 81.99% of recognition rate with 20,000 data created by the program. Moreover, this research had an efficiency test of SSD model according to data differences to analyze what feature of data exert influence upon the performance of recognizing texts in images. As a result, it is figured out that the number of labeled keywords, the addition of overlapped keyword label, the existence of keywords that is not labeled, the spaces among keywords and the differences of background images are related to the performance of SSD model. This test can lead performance improvement of SSD model or other text-recognizing machine based on deep learning algorithm with high-quality data. SSD model which is re-designed to recognize texts in images and the program developed for creating train data are expected to contribute to improvement of searching system in E-commerce. Suppliers can put less time to register keywords for products and customers can search products with product-details which is written on the catalog.