Object modeling and replacement in a video stream
US-10102423-B2 · Oct 16, 2018 · US
US11995108B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11995108-B2 |
| Application number | US-202117522080-A |
| Country | US |
| Kind code | B2 |
| Filing date | Nov 9, 2021 |
| Priority date | Jul 31, 2017 |
| Publication date | May 28, 2024 |
| Grant date | May 28, 2024 |
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Disclosed are systems, methods, and computer-readable storage media to present content on an electronic display. In one aspect, a method includes identifying a first candidate content and a second candidate content for presentation on an electronic display, determining a first probability and a second probability that the first candidate content and the second candidate content respectively will elicit a particular type of input response, determining a first weight and a second weight based on the first probability and the second probability respectively, selecting either the first content or the second content based on the first weight and the second weight; and presenting the selected content on the electronic display.
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We claim: 1. A method comprising: identifying a first content item and a second content item; estimating a plurality of probabilities of different types of input responses that will be received from a user in response to presenting the first and second content items to the user; causing transmission of a first of the plurality of probabilities of the different types of input responses to a first entity associated with the first content item; causing transmission of a second of the plurality of probabilities to a second entity associated with the second content item; determining that the first entity has changed a maximum bid amount in response to the first of the plurality of probabilities; determining that the second entity failed to change a bid amount based on the second probability; selecting for presentation to the user, as a selected content item, either the first content item or the second content item based on the bid amounts associated with the first and second entities; and generating, for presentation to the user, a first sequence of content items, the selected content being presented within the first sequence of content items, and the second type of the different types of input responses comprises a swipe up gesture that causes a second sequence of content items to be presented to the user. 2. The method of claim 1 , further comprising: establishing a first session for the user based on first user authentication credentials, the plurality of probabilities comprising the first probability that the first content item will elicit a first type of the different types of input responses and another probability that the first content item will elicit a second type of the different types of input responses, the plurality of probabilities being estimated based on a time of day, season and month during which the first content item will be presented to the user. 3. The method of claim 2 , further comprising: estimating the second probability that the second content item will elicit a given type of input response of the different types of input responses from the user, the plurality of probabilities obtained from a classifier trained based on a historical database of user responses to a plurality of content items, characteristics of users generating the responses, characteristics of the plurality of content items, and characteristics of channels over which the content items were presented. 4. The method of claim 1 , further comprising determining a first factor associated with the first content item and a second factor associated with the second content item, and determining first and second weights based on the first factor and the second factor, respectively. 5. The method of claim 4 , wherein determining the first weight comprises multiplying the first factor and the first probability to obtain the first weight. 6. The method of claim 1 , wherein a classifier is trained to generate the plurality of probabilities based on a plurality of input parameters comprising a life time distribution channel swipe rate for a given content item, a distribution channel swipe rate for the given content item, a swipe rate for a month by a given user, a lifetime distribution channel skip rate for the given content item, a swipe count for a previous month for the given content item, a total number of swipes for the given content item, an amount of time the given user has viewed given content item within a 30 day period, a distribution channel skip rate for the given content item, a skip rate per month for the given user, a lifetime number of swipes for the given content item, a number of skips the given user has performed in a preview month, a number of times the given content item has been skipped by a plurality of users who viewed the given content item, a number of times the given user has viewed given content item in the 30 day period, a life time number of skips for the given content item, and an indication of whether the given content item is displayed over a particular channel and a time of day, day of week, or month in which the given content item is displayed. 7. The method of claim 1 , further comprising: receiving input in response to the presentation of the selected content item; categorizing the received input as either a first type of input or a second type of input; and updating a historical response database based on the categorization of the received input. 8. The method of claim 7 , further comprising incrementing a total number of impressions for the selected content item in the historical response database in response to presentation of the selected content item. 9. The method of claim 7 , wherein estimating the plurality of probabilities comprises determining a total number of impressions of the first content item and a number of responses to the first content item having the first type. 10. The method of claim 9 , further comprising estimating the first probability by dividing the number of responses by the number of impressions. 11. The method of claim 9 , further comprising filtering the total number of impressions and the number of responses to those impressions and responses for the user having an age within a predetermined range. 12. The method of claim 1 , wherein a classifier is trained to generate the plurality of probabilities based on a plurality of input parameters comprising a distribution channel swipe rate for a given content item, a total number of swipes for the given content item, a distribution channel skip rate for the given content item, a skip rate per month for a given user, a number of times the given content item has been skipped by a plurality of users who viewed the given content item, and a number of times the given user has viewed given content item in a 30 day period. 13. The method of claim 1 , further comprising storing a historical database comprising a first column that stores a time of day in which a given content item of the plurality of content items was presented, a second column that stores a view time representing an amount of time the given content item was viewed, and a third column that identifies the given content item. 14. The method of claim 1 , wherein the first content item facilitates a first type of user interaction, and wherein the second content item facilitates a second type of user interaction, the first type of user interaction comprising adding a friend relationship within a social network, the second type of user interaction comprising scheduling an autonomous vehicle to pick up the user at a location indicated by a device of the user. 15. A system comprising: one or more electronic hardware processors; an electronic hardware memory, operatively coupled to the electronic hardware processor, and storing instructions that configure the one or more hardware processors to perform operations comprising: identifying a first content item and a second content item; estimating a plurality of probabilities of different types of input responses that will be received from a user in response to presenting the first and second content items to the user; causing transmission of a first of the plurality of probabilities of the different types of input responses to a first entity associated with the first content item; causing transmission of a second of the plurality of probabilities to a second entity associated with the second content item; determining that the first entity has changed a maximum bid amount in response to the first of the plurality of probabilities; determining that the second entity failed to change a bid amount based on the second probabi
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