Sedang Disiapkan

Music Discovery Engine based on Acoustic Fingerprinting

Looking to put together a music discovery engine based on [url removed, login to view] open source.

Basically i will have new artists and new songs uploaded to my server. The user searches for an artist that sounds like "Madonna" or a song that sounds like "Like a Prayer" and using acoustic fingerprinting, the discovery engine looks at the songs of the unknown artists and offers songs that sound like or are acoustically similar to "Madonna" or "Like a Prayer" for example. This will be a a new music discovery engine:

• Creates playlists/mixes based on the named artist, album or track

• Utilizes song fingerprints and acoustic tags

• Recommends similar music, based on acoustic analysis

• Includes parameters based on preference, variety, and genre

• Incorporates metadata-reliant parameters for richer results

• Applies shuffle algorithms to generate different mixes

• Provides acoustic relationships between tracks, albums and other entities

• Supports large music collections

Application is based on the open source of [url removed, login to view] and [url removed, login to view]

[url removed, login to view]

MusicBrainz is a user-maintained community music metadatabase. Music metadata is information such as the artist name, the album title, and the list of tracks that appear on an album. MusicBrainz collects this information about music and makes it available to the public so that music players can retrieve information about the music that is playing. For instance, most audio CDs do not contain the name of the artist, album, or a listing of the tracks. A music player can use the digital characteristics of an audio CD to look up the correct metadata and show it to the user during playback.

MusicBrainz also takes this concept one step further in applying it to digital audio files like MP3 files and Ogg Vorbis files. The metadata contained in these files is often incorrect or missing altogether. If this data is not present or correct, it makes it difficult for users to find the music they wish to play. Many MP3 lovers have a huge collection of MP3 files but often have a hard time finding the music to which they want to listen. The MusicBrainz solutions for this are the WindowsTagger, iEatBrainz, and the Picard Tagger--Windows, MacOS X, and Python applications that use AcousticFingerprints (TRMs) to semi-automatically identify tracks in your music collection and then write consistent and accurate metadata to your music files.

The MusicBrainz web site provides a catalog of music metadata; MusicBrainz only provides the data about the music. MusicBrainz users can browse and search this catalog to examine what music different artists have published and how those artists relate to each other to discover new music. The music metadata and its ability to uniquely identify music will also enable non-ambiguous communication about music, and will allow the Internet community to discover new music without any of the bias introduced by marketing departments of the recording industry.

[url removed, login to view]

MusicDNS is the largest single dataset of acoustic fingerprints in the world with more than 16 million individual tracks identified.

With the Open Fingerprint client-code, tracks can be identified consistently against the MusicDNS dataset, and new tracks are easily added. Currently, MusicDNS and the Open Fingerprint Architecture are being used to:

• identify duplicate tracks, even when the metadata is different, MusicIP identifies the master recording.

• fix metadata

• find out more about tracks by connecting to MusicBrainz- the worlds largest music metabase community

Basically I am building a music site with thousands of unknown bands so i am looking to develop a music discovery engine that can help users discover new unknown artists by searching for artists that they like and songs that like and then the discovery engine gives them artists that acoustically sound like the established songs/artists they are looking for.

Payment will be done in paypal - 25% down 75% upon completion.

Opensource code can be found at http://www.musicdns.org/downloads and http://wiki.musicbrainz.org/PicardWithAcousticFingerprinting

Basically i will have 20,000 + unknown tracks fropm intdependent artists. Based on the open source you have millions of established tracks to compare to. Based on the query of the artist/song, the artist discovery engine searches the 20,000 unknown artist music files and gives results of the song that best resembles acoustically the artist the user has inputed. So lets say there is a band that sounds like Aerosmith. A user searches for bands similar to Aerosmith or a song of aerosmith like "dream on". The search looks at all the 20,000 songs acoustically compared to aerosmith and gives you the result. All the meta/acoustic fingerprinting is found at those 2 open source sites that make up musicip.com I want something similar that gives similar results. Please bid ONLY when you check and know exactly what needs to be done.

Kemahiran: Perkhidmatan Audio, Pengaturcaraan C, Kejuruteraan, Linux, PHP

Lihat lebih lanjut: music discovery engine, playlists based acoustic fingerprint, look track metadata using acoustic fingerprints, acoustic fingerprinting, open source music discovery engine, acoustic fingerprint duplicate, music discovery engine windows, acoustic based duplicate song, audio fingerprint music discovery, music based fingerprint, acoustic fingerprinting difficult, what is an algorithms, what is algorithms, what is a algorithms, what are algorithms, web master develop, web develop on python, web artists, web algorithms, using algorithms, title web solutions, the web artists, the analysis of algorithms, source code music player, search the web for sounds

Tentang Majikan:
( 44 ulasan ) Los Angeles, United States

ID Projek: #63494

Dianugerahkan kepada:

STATBD

Dear honorable Sir/Madam, Thank you very much for giving us opportunity to participate your project. We are completely new on GAF as a service provider. Though we are very new on GAF , but we have vast experience of an Lagi

$4000 USD dalam 90 hari
(11 Ulasan)
5.3

9 freelancers are bidding on average $4011 for this job

cstl

Chandusoft is a customer-specific service oriented company has got an Professional and creative team with 6 years experience in Web design and development. We have expertise and experience in ecommerce site development Lagi

$4000 USD dalam 60 hari
(20 Ulasan)
6.9
rushi2440

Dear Sir, Myself Rushikesh Patel, I was working with Anand Systems Inc from last 4 years as Sr. Web Designer/Graphic Designer/Webmaster/Web Specialist/Web Master. Please find my resume attached in .doc word format. Lagi

$4600 USD dalam 100 hari
(6 Ulasan)
5.5
antonstudio

Hi, dear project manager. I am representing my team of professionals in IT-technologies, such as complete webdesign(ASP/[url removed, login to view] etc...), graphic d Lagi

$3500 USD dalam 31 hari
(1 Ulasan)
2.4
bkaufmann400

we can do this. thanks.

$5000 USD dalam 25 hari
(2 Ulasan)
4.0
MGMidget

Can you please make contact via PMB where we can chat to confirm a couple of things. Cheers Matt :-)

$5000 USD dalam 25 hari
(0 Ulasan)
0.0
LightIdeas

Dear Project Owner, We believe that our company LightIdeas has very good chances to succeed in project delivery if we qualify and get awarded. I am looking forward to your feedback. Thank you. LightIdeas

$4000 USD dalam 30 hari
(0 Ulasan)
0.0
sstservices

Hi There, We have gone through your message and assure you to give complete satisfaction by providing you the wonderful design and functionality for which you are looking for. We provide a reliable, responsive, qua Lagi

$4000 USD dalam 50 hari
(0 Ulasan)
0.0
cyberotium

I'm ready to start now .... 10 years expertise of development. If you desire watch my resume, send me a request by mail.

$2000 USD dalam 0 hari
(0 Ulasan)
0.0