Music covers an important part of our lives and has existed in almost every society and has universal acoustic features. Even though music is a part of our lives, there are so many unknown secrets about it that many researches have been done and continue to be done about music. Many researchers have previously tried to identify the similarities and differences between music existing in various different cultures and to understand the origin of universality. Researchers in the Department of Physics at the Korea Advanced Institute of Science and Technology (KAIST) conducted a study to examine how music-related cognitive functions, namely the musical instinct, arise.
In the study, the research team utilized AudioSet, a large-scale collection of audio data provided by Google, and taught the artificial neural network to learn various sounds. The research found that certain neurons within the network model responded selectively to music, meaning that neurons spontaneously formed that were minimally responsive to a variety of other sounds, such as the sounds of animals, nature, or machines, but were highly responsive to a variety of types of music, including both instrumental and vocal.
Distinct representation of music in deep neural networks trained for natural sound detection without music.
a Example log-Mel spectrograms of the natural sound data in the AudioSet31. b Architecture of the deep neural network used to detect the natural sound categories in the input data. The purple box indicates the average pooling layer. c Performance (mean average precision, mAP) of the network trained without music for music-related categories (top, red bars) and other categories (bottom, blue). n = 5 independent networks. Error bars represent mean +/− SD. d Density plot of the t-SNE embedding of feature vectors obtained from the network in C. The lines represent iso-proportion lines at 80%, 60%, 40%, and 20% levels. Source data are provided as a Source Data file.
Using an artificial deep neural network that models the brain's processing of auditory information, the research shows that music-tuned units can spontaneously emerge by learning natural sound perception even without learning music. In short, the research uses an artificial neural network model to reveal that musical instincts emerge from the human brain without special learning. For more detailed information, you can look at the research article, here is the research link.
It's a really interesting research, and the results of the research are even more interesting. The results show how successful artificially built models with human-like musicality, and artificial intelligence music apps can be and how widely they will be used in the future. Whether we want it or not, AI will be everywhere in the future and it seems that it will be more in the music industry. Frankly, I thought that artificial intelligence would not be very successful in the music industry, but after a lot of research I have examined recently, I started to believe that artificial intelligence will be very successful in the music industry as well. However, I do not yet know whether AI will be more beneficial or harmful to the music industry.
But the only thing I know is that I love music and the most important thing for me is that music touches my heart.
Music is powerful enough to change lives. Enjoy the music and stay with Love.
Question of the Day : What do you think of the research? If you don't have an answer to this question, You can talk about your favorite song or anything related to music in your comment.
Today 3 more cards were added to my collection.
i213 SW91 is a common card and has 1 Luck.
158 Geez is a common card and has 10 fans.
R453 BV93 is a rare card and has 50 luck.
My Cards : 3352
Fans : 145151 (From cards: 138326 - Temporary drunks: 6825)
Luck : 30289
Skill : 212712 (From cards: 105332 - From lessons: 107380)
IM : 2642
Ego from fans: 145151 (6825 are drunks).
Ego from missions: 90969
Total: 236120
To participate in today's giveaway, just leave a comment and answer the question of the day. In addition, comments containing at least 2 sentences (20 words) will earn an additional +5000 Starbits. Also I won't accept one or two word and irrelevant comments. Good luck.
- Everybody commenting before 23:59:59 UTC (Coordinated Universal Time) on 13 March 2024 will be included into the giveaway.
- If your risingstargame username is different put it in your comment.
- Upvote, follow and reblogs are not required, but your upvotes, tips and reblogs are welcome so this Giveaway can reach more people.
- You can follow me so you don't miss my other giveaways.
- I will use the Hive random comment picker to determine the winner. (Exclude bots will be set to selected.)
Good Luck to All Participating
Results of Last Giveaway
The post that is the subject of the giveaway : Click for the post
Congratulations @stamato your reward has been sent.
- Transaction TX : 5bdc738c81858a733bef0a68d69178415b403293
Other participants: @jfang003, @buzzking, @outwars, @kryptof, @imno, @joseal2020, @tydynrain, @middle-earthling, @hatdogsensei, @walarhein, @vaynard86, @henruc, @olaf.gui, @imfarhad, @subidu,
Please read the rules, if you don't follow the rules, I ignore them even if you win.
Thanks to everyone who participated. You can follow all the giveaways on my blog
Notification List :
@olaf.gui, @bitandi, @ydaiznfts, @joseal2020, @noroi, @yeckingo1, @alexvan, @rimurutempest, @servelle, @imfarhad, @ianballantine, @rayius, @pero82, @isnochys, @thebighigg, @dubble, @fredkese, @henruc, @kryptofire, @hatdogsensei, @dk1trade, @jfang003, @vaynard86, @stranger27, @blitzzzz, @tin.aung.soe, @tinyputerboy, @hoosie, @pirulito.zoado, @qoogohome, @supriya.gupta, @tydynrain, @dafusa, @pousinha, @lwinlwinmyint, @pulubengdugs, @akiraymd, @pregosauce, @mario02, @loxavius, @wazock, @middle-earthling, @stamato, @walarhein, @lumpiadobo, @healjoal, @ladymisa, @coquicoin, @alexisgr93, @daethical, @celi130, @monsterbuster, @subidu, @kurogan, @rishabhshukla, @javss, @memess, @ykyan2, @lightbruce17, @edskymiguel, @myintmo.shweyi, @ramindi1, @arieruzzzz, @baburamg, @gs1, @waynechuasy, @kraki, @circlebubble, @esbat, @arngrim281, @coquicoin-leo, @nietokilll, @fotonorway8, @maurojd, @catotune, @upstaked, @cursephantom, @yankosoito, @peniel2010, @getthismonkey, @emeka4, @guurry123, @josevall901, @mimismartypants, @geneeverett, @smallcircle
Not : If you want to be on the notification list or leave, let me know in the comments.
For STARBITS Trading, you can visit LeoDex, Tribadex, Hive-Engine.
For STARPRO Trading, you can visit LeoDex, Tribadex, Hive-Engine.
If you want to join the Rising Star Game, my reference link
Thanks To Everyone Who Supported.
Thank you for reading
@rtonline
Posted Using InLeo Alpha