최소 단어 이상 선택하여야 합니다.
최대 10 단어까지만 선택 가능합니다.
SAI
다음과 같은 기능을 한번의 로그인으로 사용 할 수 있습니다.
NTIS 바로가기다음과 같은 기능을 한번의 로그인으로 사용 할 수 있습니다.
DataON 바로가기다음과 같은 기능을 한번의 로그인으로 사용 할 수 있습니다.
Edison 바로가기다음과 같은 기능을 한번의 로그인으로 사용 할 수 있습니다.
Kafe 바로가기국가/구분 | United States(US) Patent 등록 |
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국제특허분류(IPC7판) |
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출원번호 | US-0961934 (2013-08-08) |
등록번호 | US-8953886 (2015-02-10) |
발명자 / 주소 |
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출원인 / 주소 |
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대리인 / 주소 |
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인용정보 | 피인용 횟수 : 15 인용 특허 : 853 |
Character recognition is described. In one embodiment, it may use matched sequences rather than character shape to determine a computer-legible result.
1. An article of manufacture comprising a non-transitory computer-readable medium with instructions encoded thereon, the instructions configured to cause one or more processors to perform a method comprising: obtaining an image based on a document capture process performed on a rendered document;ide
1. An article of manufacture comprising a non-transitory computer-readable medium with instructions encoded thereon, the instructions configured to cause one or more processors to perform a method comprising: obtaining an image based on a document capture process performed on a rendered document;identifying a portion of the image, the portion comprising a sequence of text units;segmenting the portion of the image into a sequence of segmented sub-images, each segmented sub-image comprising a single text unit of the sequence of text units;for each segmented sub-image of the sequence of segmented sub-images:determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of a stored sub-image; andbased on determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image, assigning to the segmented sub-image a text unit identity that is associated with the stored sub-image;generating a representation of the portion of the image, based on the assigned text unit identities; andidentifying the sequence of segmented sub-images, based on the generated representation. 2. The article of manufacture of claim 1, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a likelihood that the segmented sub-image corresponds to the stored sub-image; anddetermining that the likelihood meets a predetermined threshold. 3. The article of manufacture of claim 1, wherein the stored sub-image is stored by adding the stored sub-image to a template of sub-images. 4. The article of manufacture of claim 1, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a difference between the segmented sub-image and the stored sub-image;identifying a pattern, based on the difference; anddetermining that a size of the pattern meets a predetermined size threshold. 5. The article of manufacture of claim 1, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: decomposing the segmented sub-image into a first set of vectors;decomposing the stored sub-image into a second set of vectors; anddetermining that the first set of vectors and the second set of vectors meet a predetermined similarity threshold. 6. The article of manufacture of claim 1, wherein the image comprises an image of one or more words from the rendered document, each of the words comprising one or more text units. 7. The article of manufacture of claim 1, wherein segmenting a portion of the image into multiple segmented sub-images comprises identifying space between the sub-images. 8. A system, comprising: one or more data processing apparatus; anda computer-readable storage device including instructions executable by the data processing apparatus and upon such execution cause the data processing apparatus to perform operations comprising:obtaining an image based on a document capture process performed on a rendered document;identifying a portion of the image, the portion comprising a sequence of text units;segmenting the portion of the image into a sequence of segmented sub-images, each segmented sub-image comprising a single text unit of the sequence of text units;for each segmented sub-image of the sequence of segmented sub-images: determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of a stored sub-image; andbased on determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image, assigning to the segmented sub-image a text unit identity that is associated with the stored sub-image;generating a representation of the portion of the image, based on the assigned text unit identities; andidentifying the sequence of segmented sub-images, based on the generated representation. 9. The system of claim 8, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a likelihood that the segmented sub-image corresponds to the stored sub-image; anddetermining that the likelihood meets a predetermined threshold. 10. The system of claim 8, wherein the stored sub-image is stored by adding the stored sub-image to a template of sub-images. 11. The system of claim 8, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a difference between the segmented sub-image and the stored sub-image;identifying a pattern, based on the difference; anddetermining that a size of the pattern meets a predetermined size threshold. 12. The system of claim 8, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: decomposing the segmented sub-image into a first set of vectors;decomposing the stored sub-image into a second set of vectors; anddetermining that the first set of vectors and the second set of vectors meet a predetermined similarity threshold. 13. The system of claim 8, wherein the image comprises an image of one or more words from the rendered document, each of the words comprising one or more text units. 14. The system of claim 8, wherein segmenting a portion of the image into multiple segmented sub-images comprises identifying space between the sub-images. 15. A computer-implemented method, comprising: obtaining an image based on a document capture process performed on a rendered document;identifying a portion of the image, the portion comprising a sequence of text units;segmenting the portion of the image into a sequence of segmented sub-images, each segmented sub-image comprising a single text unit of the sequence of text units;for each segmented sub-image of the sequence of segmented sub-images: determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of a stored sub-image; andbased on determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image, assigning to the segmented sub-image a text unit identity that is associated with the stored sub-image;generating a representation of the portion of the image, based on the assigned text unit identities; andidentifying the sequence of segmented sub-images, based on the generated representation. 16. The computer-implemented method of claim 15, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a likelihood that the segmented sub-image corresponds to the stored sub-image; anddetermining that the likelihood meets a predetermined threshold. 17. The computer-implemented method of claim 15, wherein the stored sub-image is stored by adding the stored sub-image to a template of sub-images. 18. The computer-implemented method of claim 15, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: identifying a difference between the segmented sub-image and the stored sub-image;identifying a pattern, based on the difference; anddetermining that a size of the pattern meets a predetermined size threshold. 19. The computer-implemented method of claim 15, wherein determining that one or more features of the segmented sub-image are classified as being similar to one or more corresponding features of the stored sub-image comprises: decomposing the segmented sub-image into a first set of vectors;decomposing the stored sub-image into a second set of vectors; anddetermining that the first set of vectors and the second set of vectors meet a predetermined similarity threshold. 20. The computer-implemented method of claim 15, wherein the image comprises an image of one or more words from the rendered document, each of the words comprising one or more text units. 21. The computer-implemented method of claim 15, wherein segmenting a portion of the image into multiple segmented sub-images comprises identifying space between the sub-images.
해당 특허가 속한 카테고리에서 활용도가 높은 상위 5개 콘텐츠를 보여줍니다.
더보기 버튼을 클릭하시면 더 많은 관련자료를 살펴볼 수 있습니다.
IPC | Description |
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A | 생활필수품 |
A62 | 인명구조; 소방(사다리 E06C) |
A62B | 인명구조용의 기구, 장치 또는 방법(특히 의료용에 사용되는 밸브 A61M 39/00; 특히 물에서 쓰이는 인명구조 장치 또는 방법 B63C 9/00; 잠수장비 B63C 11/00; 특히 항공기에 쓰는 것, 예. 낙하산, 투출좌석 B64D; 특히 광산에서 쓰이는 구조장치 E21F 11/00) |
A62B-1/08 | .. 윈치 또는 풀리에 제동기구가 있는 것 |
내보내기 구분 |
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구성항목 |
관리번호, 국가코드, 자료구분, 상태, 출원번호, 출원일자, 공개번호, 공개일자, 등록번호, 등록일자, 발명명칭(한글), 발명명칭(영문), 출원인(한글), 출원인(영문), 출원인코드, 대표IPC 관리번호, 국가코드, 자료구분, 상태, 출원번호, 출원일자, 공개번호, 공개일자, 공고번호, 공고일자, 등록번호, 등록일자, 발명명칭(한글), 발명명칭(영문), 출원인(한글), 출원인(영문), 출원인코드, 대표출원인, 출원인국적, 출원인주소, 발명자, 발명자E, 발명자코드, 발명자주소, 발명자 우편번호, 발명자국적, 대표IPC, IPC코드, 요약, 미국특허분류, 대리인주소, 대리인코드, 대리인(한글), 대리인(영문), 국제공개일자, 국제공개번호, 국제출원일자, 국제출원번호, 우선권, 우선권주장일, 우선권국가, 우선권출원번호, 원출원일자, 원출원번호, 지정국, Citing Patents, Cited Patents |
저장형식 |
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메일정보 |
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안내 |
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