This application claims the benefit of Korean Patent Application No. 10-2006-0111769, filed on Nov. 13, 2006, in the Korean Intellectual Property Office, the disclosure of which is incorporated herein by reference.
1. Field of the Invention
The present invention relates to a photo recommendation method using a mood of music and a system thereof. More particularly, the present invention relates to a photo recommendation method and a system using the method, which recommend a photo using information of a mood of music, a photo color, and photo categorization after searching for an associated photo using a music title and lyrics.
2. Description of Related Art
Currently, a sound source player such as an MP3 player generally tends to provide visual information, such as lyrics, with a service of playing a sound source of the MP3.
In case of a digital camera, the digital camera provides a function of taking a picture of an object, and also provides a function displaying the taken photo in a various forms.
Also, multimedia devices having multiple functions, such as the MP3 player function and a digital camera function, are gradually being popularized.
Currently, a method which can simultaneously use the various function of the multimedia devices are required, i.e. a user simultaneously uses a function of the digital camera while listening to the sound source, played via the multimedia device.
However, current techniques of using the various functions of the multimedia devices are at unsatisfactory levels since currently the user may only visualize an equalizer in form of a moving picture while listening to the sound source of the music.
A photo-music association recommendation method using the multi media devices according to a related art has a search function which searches for image data having a high association with music data, using meta data of music data, and meta data of photo data. As an example, when a genre of the music data is a dance music, and when lyrics of the music data relates to break-up, and if a photo associated with Christmas is provided to a user, since the music data is the dance music, matching between the photo and the music is not properly performed. As described above, the photo-music association recommendation method using the multi media devices according to the related art has a disadvantage in that, the image data having a high association with the music data may not be accurately retrieved by using the meta data.
A music recommendation method using photo information according to a related art has problems in that, music may not be variously recommended by using photo color information, and a music recommendation function, having music being recommended from a location photo, is so limited.
Also, the music recommendation method using photo information according to a related art has a problem in that, the same music may be recommended since photos having contrasting atmospheres may be categorized into a similar photo group.
Also, the music recommendation method using photo information according to a related art has a problem in that, a photo and music having opposite atmospheres may be recommended since there is less association between a photo categorized according to color information and music categorized according to beat information.
An aspect of the present invention provides a photo recommendation method and a system using the method which can recommend a photo using information of a mood of music and photo categorization after searching for an associated photo with music title and lyrics information.
An aspect of the present invention also provides a photo recommendation method and a system using the method which can automatically recommend a photo appropriate for music, from photos stored by a user.
According to an aspect of the present invention, there is provided a photo recommendation method including: categorizing the music into a mood by analyzing a sound source of the music; searching for a photo using meta information of the music; and recommending the photo corresponding to the categorized mood of the music according to a result of the searching.
According to another aspect of the present invention, there is provided a photo recommendation system including: a music mood categorizer categorizing the music into a mood; a photo search module searching for a photo using meta information of the music; and a photo recommendation module recommending the photo corresponding to the categorized mood of the music according to a result of the searching.
Additional and/or other aspects and advantages of the present invention will be set forth in part in the description which follows and, in part, will be obvious from the description, or may be learned by practice of the invention.
The patent or application file contains at least one drawing executed in color. Copies of this patent or patent application publication with color drawing(s) will be provided by the Office upon request and payment of the necessary fee. The above and/or other aspects and advantages of the present invention will become apparent and more readily appreciated from the following detailed description, taken in conjunction with the accompanying drawings of which:
Reference will now be made in detail to exemplary embodiments of the present invention, examples of which are of the accompanying drawings, wherein like reference numerals refer to the like elements throughout. The exemplary embodiments are described below in order to explain the present invention by referring to the figures.
Referring to
Referring to
The music storage module 210 stores a sound source of music and meta information of the music. The meta information of the music may include information of a music title, lyrics, a singer, and a genre, and information of categorization of a mood of music, which is previously categorized off-line.
The sound source analyzer 220 analyzes a sound source of the music. Namely, the sound source analyzer 220 extracts a timbre feature of the music from the sound source of the music, and analyzes the extracted timbre feature.
The mood categorizer 230 categorizes the music into the mood according to a result of the analysis of the sound source. Namely, the mood categorizer 230 categorizes the music into the mood using a categorizer which is previously trained with the extracted timbre feature, based on the analyzed timbre feature.
The photo search module 120 of
Referring to
The search vocabulary extraction module 310 extracts a search vocabulary to search for a photo using information of a music title, lyrics, a singer, and a genre, included in the meta information of the music. Hereinafter, a configuration and operation of the search vocabulary extraction module 310 will be described in detail by referring to
Referring to
The morpheme analyzer 410 analyzes a morpheme with respect to information of a music title, lyrics, a singer, and a genre, included in the meta information of the music. The morpheme analyzer 410 analyzes the morpheme, forming the music title, the lyrics, the singer, and the genre, and outputs tag information associated with a result of the analysis of the morpheme. Namely, the morpheme analyzer 410 may output the tag information associated with the result of the analysis of the morpheme with respect to the information of the music title, the lyrics, the singer, and the genre as ‘Blue/PAA’+‘night/NCD’+‘Seoul/NQ’+‘in/JCA’ when the music title is ‘Blue Night in Seoul’.
The first detector 420 extracts an associated keyword using the result of the analysis of the morpheme with respect to the music title. Namely, the first detector 420 extracts a keyword closely associated with searching for the photo from the result of the analysis of the morpheme with respect to the information of the music title, the lyrics, the singer, and the genre. As an example, the first detector 420 may detect the keyword associated with a ‘where/location’, ‘what/object’, ‘who/people’, ‘when/time’, ‘what/event’, and ‘which/action’ which follows a 6Ws principle, based on the result of the analysis of the morpheme with respect to the information of the music title, the lyrics, the singer, and the genre. Also, the first detector 420 detects the keyword associated with the searching for the photo using an ontology with respect to the result of the analysis of the morpheme, based on a six W's principle and a hierarchy relation.
The second detector 430 detects a feature for categorizing the music into the theme based on the result of the analysis of the morpheme. Namely, the second detector 430 detects the feature for categorizing the music into the theme using the result of the analysis of the morpheme with respect to the information of the music title, the lyrics, the singer, and the genre. The feature for categorizing the music into the theme is a feature that is necessary for categorizing music into a theme, and a feature for categorizing the lyrics of the music may be previously determined by training.
The theme categorizer 440 categorizes the music into the theme based on the detected feature for categorizing the music into the theme. Namely, the theme categorizer 440 categorizes the music into the theme using a categorizer which is previously trained based on the detected feature for categorizing the music into the theme. As an example, the theme categorizer 440 may variously categorizes the music into themes such as ‘love’, ‘breakup’, ‘spring’, ‘summer’, ‘fall’, and ‘winter’. The theme of the music may be categorized based on the result of the analysis of the morpheme with respect to the music title, the lyrics, the singer, and the genre by the theme categorizer 440.
The keyword expansion module 450 expands a photo keyword based on an associated keyword, theme of the music, and the mood of the music. Namely, the keyword expansion module 450 expands the photo keyword using the associated keyword with respect to the keyword, the theme of the music, and the mood of the music in preparation for a case few photos are retrieved, or a case a non-photo is retrieved when the photo is retrieved using only a basic keyword.
As an example, when a basic keyword is ‘love’, the keyword expansion module 450 initially searches for a photo using the ‘love’ for the basic keyword, subsequently expands the basic keyword ‘love’ to an associated keyword with the basic keyword, the theme of the music, and the mood of the music, such as ‘lover’, ‘date’, ‘first love’, ‘one-sided love’, ‘family’, ‘song’, and ‘propose’, in preparation for in case non-photo corresponds to a result of the searching.
As another example, when a basic keyword is ‘breakup’, the keyword expansion module 450 initially searches for a photo using ‘breakup’ for the basic keyword, subsequently expands the basic keyword ‘breakup’ to an associated keyword with the basic keyword, the theme of the music, and the mood of the music, such as ‘tears’, ‘broken-heart’, ‘rain’, and ‘last date’, in preparation for the case the non-photo corresponds to a result of the searching.
As still another example, when a basic keyword is ‘pleasant’, the keyword expansion module 450 initially searches for a photo using ‘pleasant’ for the basic keyword, subsequently expands the basic keyword ‘pleasant’ to an associated keyword with the basic keyword, the theme of the music, and the mood of the music, such as ‘pleased’, ‘joy’, ‘hilarious’, and ‘exciting’, in preparation for the case the non-photo corresponds to a result of the searching.
The search module 320 searches for a photo associated with the music using the extracted search vocabulary. As an example, when an extracted search vocabulary is ‘summer’, the search module 320 searches for a photo associated with the extracted search vocabulary ‘summer’. As another example, when an extracted search vocabulary is ‘breakup’, the search module 320 searches for a photo associated with the extracted search vocabulary ‘breakup’.
The photo recommendation module 130 of
As an example, when the mood of the music is ‘exciting’ as a the result of the searching, a main color corresponding to a mood ‘exciting’ is red as illustrated in
As another example, when the mood of the music is ‘pleasant’ according to the result of the searching, a main color corresponding to a mood ‘pleasant’ of the music is yellow as illustrated in
As still another example, when the mood of the music is ‘calm’ as the result of the searching, a main color corresponding to a mood ‘calm’ is blue as illustrated in
As yet another example, when the mood of the music is ‘sad’ as the result of the searching, a main color corresponding to a mood ‘sad’ is green as illustrated in
Referring to
The photo categorizer 510 categorizes a photo. Namely, the photo categorizer 510 categorizes the photo using a feature of the photo and exchange image file format (Exif) information of the photo. The category of the photo may be variously categorized according to a location where the photo is taken, an object of the photo, a way of taking the photo according to a person, a topography, a building, and a macro. The categorization of the photo may be loaded in a form of meta information as a result of a photo search by a text after having been performed offline.
The color analyzer 520 analyzes a color of the photo. Namely, the color analyzer 520 extracts a color feature included in the photo, and analyzes a main color included in the photo based on a result of the extraction of the color feature. The color analyzer 520 extracts a maximum bin in a color histogram included in the retrieved photo, and analyzes the main color based on the extracted maximum bin.
The photo filter 530 filters the retrieved photo by referring to the mood of the music, the color of the photo, and the category of the photo.
As an example, when a mood of the music is ‘calm’ as illustrated in
As another example, when a mood of the music is close to ‘exciting’, the photo filter 530 may select a photo whose colors are various and bright from the retrieved photo.
As still another example, when a mood of the music corresponds to ‘calm’, the photo filter 530 may select a photo whose colors are monotonous and gloomy from the retrieved photo.
Referring to
The photo filter 610 filters the retrieved photo based on the categorized mood of the music. The recommendation module 620 recommends an appropriate photo according to a result of the filtering of the photo.
Referring to
The photo player 720 plays the edited moving picture. As an example, (when the edited moving picture is the slide show type moving picture, the photo player 720 plays the moving picture slower when the genre of the music is Rhythm & Blues and a mood of the music is ‘calm’, and the photo player 720 plays the moving picture faster when a mood of the music is ‘exciting’.
Referring to
The mood of the music may be categorized according to a timber feature after the timber feature is extracted with respect to a sound source of the music by the music mood categorizer 110 of
The main color is a most frequently used color by the color analyzer 520 of
The category of photo may be categorized depending on an object or a method of taking the photo, such as a terrain, an architecture, and a macro.
As described above, the photo recommendation system 100 of
Also, the photo recommendation system 100 of
Also, the photo recommendation system 100 of
Referring to
Referring to
The photo recommendation system 100 of
The photo recommendation system 100 of
Referring to
Referring to
The photo recommendation system 100 of
The photo recommendation system 100 of
The photo recommendation system 100 of
In operation 1250, the photo recommendation system 100 of
As an example, in operation 1250, when a basic keyword is ‘love’, the photo recommendation system 100 of
As another example, in operation 1250, when a basic keyword is ‘breakup’, the photo recommendation system 100 of
As still another example, in operation 1250, when a basic keyword is ‘pleasant’, the photo recommendation system 100 of
The photo recommendation system 100 of
The photo recommendation system 100 of
As another example, when the mood of the music is ‘pleasant’ as the result of the searching, a main color corresponding to a mood ‘pleasant’ of the music is yellow as illustrated in
As still another example, when the mood of the music is ‘calm’ as the result of the searching, a main color corresponding to a mood ‘calm’ is blue as illustrated in
As yet another example, when the mood of the music is ‘sad’ as the result of the searching, a main color corresponding to a mood ‘sad’ is green as illustrated in
Referring to
As an example, when the mood of the music is ‘calm’ as illustrated in
As another example, when the mood of the music is similar to ‘exciting’, the photo recommendation system 100 of
As still another example, when the mood of the music is similar to ‘calm’, the photo recommendation system 100 of
The photo recommendation system 100 of
Referring to
The photo recommendation system 100 of
Referring to
The photo recommendation method according to the above-described embodiment of the present invention may be recorded in computer-readable media including program instructions to implement various operations embodied by a computer. The media may also include, alone or in combination with the program instructions, data files, data structures, and the like. Examples of computer-readable media include magnetic media such as hard disks, floppy disks, and magnetic tape; optical media such as CD ROM disks and DVD; magneto-optical media such as optical disks; and hardware devices that are specially configured to store and perform program instructions, such as read-only memory (ROM), random access memory (RAM), flash memory, and the like. The media may also be a transmission medium such as optical or metallic lines, wave guides, and the like, including a carrier wave transmitting signals specifying the program instructions, data structures, and the like. Examples of program instructions include both machine code, such as produced by a compiler, and files containing higher level code that may be executed by the computer using an interpreter. The described hardware devices may be configured to act as one or more software modules in order to perform the operations of the above-described embodiments of the present invention.
According to the present invention, a photo recommendation method using a mood of music according to the present invention may recommend a photo using information of a mood of music and photo categorization after searching for an associated photo with music title and lyrics information.
Also, a photo recommendation method using a mood of music according to the present invention may more variously use a function of a multimedia device by automatically recommending an appropriate photo for the music from photos that are taken using the multimedia device.
Also, a photo recommendation method using a mood of music according to the present invention may improve utility of stored photos having been taken by automatically recommending an appropriate photo for the music from the stored photos having been taken using the multimedia device.
Although a few exemplary embodiments of the present invention have been shown and described, the present invention is not limited to the described exemplary embodiments. Instead, it would be appreciated by those skilled in the art that changes may be made to these exemplary embodiments without departing from the principles and spirit of the invention, the scope of which is defined by the claims and their equivalents.
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