IPC분류정보
국가/구분 |
United States(US) Patent
등록
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국제특허분류(IPC7판) |
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출원번호 |
US-0835505
(2010-07-13)
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등록번호 |
US-8630536
(2014-01-14)
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발명자
/ 주소 |
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출원인 / 주소 |
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대리인 / 주소 |
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인용정보 |
피인용 횟수 :
0 인용 특허 :
182 |
초록
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Identification of starting and ending times of commercial breaks and commercials within those commercial breaks found in audiovisual content is disclosed. A solution to a “batch optimization” problem is used in which commercial locations within a set of audiovisual content are detected as a group by
Identification of starting and ending times of commercial breaks and commercials within those commercial breaks found in audiovisual content is disclosed. A solution to a “batch optimization” problem is used in which commercial locations within a set of audiovisual content are detected as a group by choosing a set of commercial locations which optimizes a cost function which can include considerations of, for example, 1) one or more cues, 2) relative locations of commercials within the audiovisual content, and/or 3) probability models based on statistics obtained regarding characteristics of typical commercial and commercial breaks. Optimization can be done over the total set of commercial location decisions, rather than on a per-commercial basis. Additionally, the cost function can be iteratively evaluated and many more types of cues and combinations of cues can be used in detection of commercials.
대표청구항
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1. A method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: selecting a first candidate time identified within the duration of time spanned by the set of audiovisual content, wherein the first candidate time is identified based on the de
1. A method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: selecting a first candidate time identified within the duration of time spanned by the set of audiovisual content, wherein the first candidate time is identified based on the detection of one or more predetermined cues, andwherein the candidate time represents a possible boundary time of a commercial;assigning a score to the first candidate time based on one or more predetermined cues; andanalyzing the first candidate time to determine a likelihood that the first candidate time is a commercial boundary time, wherein the analysis is performed by processing circuitry and is based at least in part on an evaluation of one or more characteristics of audiovisual content occurring after the first candidate time and associated probabilities, andwherein the score of the first candidate time is adjusted based on the evaluated characteristics. 2. The method as in claim 1, wherein the analysis is further based, in part, on one or more characteristics of audiovisual content occurring before the first candidate time. 3. The method as in claim 1, wherein the analysis is based on one or more characteristics of audiovisual content occurring throughout the entire duration of time. 4. A method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: selecting a first candidate time identified within the duration of time spanned by the set of audiovisual content, the first candidate time being identified based on the detection of one or more predetermined cues and the candidate time representing a possible boundary time of a commercial; andassigning a score to the first candidate time based on one or more predetermined cues;analyzing the first candidate time to determine a likelihood that the first candidate time is a commercial boundary time, wherein the analysis is performed by processing circuitry and is based at least in part on a relationship of the first candidate time to one or more other candidate times occurring after the first candidate time, andwherein the score of the first candidate time is adjusted based on the relationship to the one or more other candidate times. 5. The method as in claim 4, wherein the analysis is based on a relationship of the first candidate time to all other candidate times. 6. A non-transitory computer-readable medium storing computer-readable instructions to perform a method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: detecting the presence of a cue identifying an absence of a usually present network icon in the audiovisual content;selecting a first candidate time within the duration of time spanned by the set of audiovisual content based on the identified cue, the first candidate time representing a possible boundary time of a commercial;assigning a score to the first candidate time based, at least in part, on the identified cue; andanalyzing the first candidate time to determine a likelihood that the first candidate time is a commercial boundary time, wherein the analysis is performed by processing circuitry and is based at least in part on an evaluation of one or more characteristics of audiovisual content occurring after the first candidate time and associated probabilities; andwherein the score of the first candidate time is adjusted based on the evaluated characteristics. 7. The computer-readable medium as in claim 6, further comprising detecting the presence of a cue identifying a sequence of black frames in the visual content, wherein a candidate time is selected based on an evaluation of one or more network icon and black frame cues. 8. The computer-readable medium as in claim 6, further comprising detecting the presence of a cue identifying an audio pause in the audio content, wherein a candidate time is selected based on an evaluation of one or more network icon and audio pause cues. 9. The computer-readable medium as in claim 6, further comprising detecting the presence of a cue identifying a scene cut or fade in the visual content, wherein a candidate time is selected based on an evaluation of one or more network icon and scene cut/fade cues. 10. The computer-readable medium as in claim 6, further comprising detecting the presence of a cue identifying the occurrence of specified closed-captioning formatting signals or the absence of closed-captioning, wherein a candidate time is selected based on an evaluation of one or more network icon and closed-captioning cues. 11. A method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: detecting the presence of a cue identifying a presence of music in the audio content of the audiovisual content;selecting a first candidate time within the duration of time spanned by the set of audiovisual content based on the identified cue, the first candidate time representing a possible boundary of a commercial;assigning a score to the first candidate time based, at least in part, on the identified cue; andanalyzing the first candidate time to determine a likelihood that the first candidate time is a commercial boundary time, wherein the analysis is performed by processing circuitry and is based at least in part on an evaluation of one or more characteristics of audiovisual content occurring after the first candidate time and associated probabilities; andwherein the score of the first candidate time is adjusted based on the evaluated characteristics. 12. The method as in claim 11, further comprising detecting the presence of a cue identifying a sequence of black frames in the visual content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more music and black frame cues. 13. The method as in claim 11, further comprising detecting the presence of a cue regarding an audio pause in the audio content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more music and audio pause cues. 14. The method as in claim 11, further comprising detecting the presence of a cue identifying a scene cut or fade in the visual content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more music and scene cut/fade cues. 15. The method as in claim 11, further comprising detecting the presence of a cue identifying the occurrence of specified closed-captioning formatting signals or the absence of closed-captioning in the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more music and closed-captioning cues. 16. The method as in claim 11, further comprising detecting the presence of a cue regarding the absence of a usually present network icon in the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more music and network icon cues. 17. A method for detecting a commercial in a set of audiovisual content spanning a duration of time, the method comprising: detecting the presence of a cue identifying a density of scene cuts or fades in the visual content of the audiovisual content;selecting a first candidate time within the duration of time spanned by the set of audiovisual content based on the identified cue, the candidate time representing a possible boundary time of a commercial;assigning a score to the first candidate time based, at least in part, on the identified cue; andanalyzing the first candidate time to determine a likelihood that the first candidate time is a commercial boundary time, wherein the analysis is performed by processing circuitry and is based at least in part on an evaluation of one or more characteristics of audiovisual content occurring after the first candidate time and associated probabilities; andwherein the score of the first candidate time is adjusted based on the evaluated characteristics. 18. The method as in claim 17, further comprising detecting the presence of a cue identifying a sequence of black frames in the visual content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more scene cut/fade density and black frame cues. 19. The method as in claim 17, further comprising detecting the presence of a cue identifying an audio pause in the audio content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more scene cut/fade density and audio pause cues. 20. The method as in claim 17, further comprising detecting the presence of a cue identifying a scene cut or fade in the visual content of the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more scene cut/fade density and scene cut/fade cues. 21. The method as in claim 17, further comprising detecting the presence of a cue identifying the occurrence of specified closed-captioning formatting signals or the absence of closed-captioning in the audiovisual content, wherein a candidate time is selected based on an evaluation of one or more scene cut/fade density and closed-captioning cues.
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