Applied Sciences, Free Full-Text
Por um escritor misterioso
Last updated 19 novembro 2024
The domestic cat (Feliscatus) is one of the most attractive pets in the world, and it generates mysterious kinds of sound according to its mood and situation. In this paper, we deal with the automatic classification of cat sounds using machine learning. Machine learning approach for the classification requires class labeled data, so our work starts with building a small dataset named CatSound across 10 categories. Along with the original dataset, we increase the amount of data with various audio data augmentation methods to help our classification task. In this study, we use two types of learned features from deep neural networks; one from a pre-trained convolutional neural net (CNN) on music data by transfer learning and the other from unsupervised convolutional deep belief network that is (CDBN) solely trained on a collected set of cat sounds. In addition to conventional GAP, we propose an effective pooling method called FDAP to explore a number of meaningful features. In FDAP, the frequency dimension is roughly divided and then the average pooling is applied in each division. For the classification, we exploited five different machine learning algorithms and an ensemble of them. We compare the classification performances with respect following factors: the amount of data increased by augmentation, the learned features from pre-trained CNN or unsupervised CDBN, conventional GAP or FDAP, and the machine learning algorithms used for the classification. As expected, the proposed FDAP features with larger amount of data increased by augmentation combined with the ensemble approach have produced the best accuracy. Moreover, both learned features from pre-trained CNN and unsupervised CDBN produce good results in the experiment. Therefore, with the combination of all those positive factors, we obtained the best result of 91.13% in accuracy, 0.91 in f1-score, and 0.995 in area under the curve (AUC) score.
Applied Sciences An Open Access Journal from MDPI
Applied Science transparent background PNG cliparts free download
Applied Sciences An Open Access Journal from MDPI
Applied Sciences, Free Full-Text
15+ Applied Sciences Books for Free! [PDF]
Eng, Free Full-Text
Applied sciences Stock Photos, Royalty Free Applied sciences Images
AHS Undeclared
Journal of Advanced Research by Elsevier
Recomendado para você
-
Angry Cat Sounds and Pictures Prank Your Dog - Excite Your Dog19 novembro 2024
-
Angry Cat SOUNDS and PICTURES19 novembro 2024
-
Causes Of Laryngitis in Cats & What to Do19 novembro 2024
-
Angry Cat Sounds - video Dailymotion19 novembro 2024
-
Angry Cat Sounds - Colaboratory19 novembro 2024
-
Angry Cat Sound Gifts & Merchandise for Sale19 novembro 2024
-
12 Hours of Angry Cat Sounds ~ SCARY ~ Ultra Fast Speed19 novembro 2024
-
5,900+ Hissing Stock Photos, Pictures & Royalty-Free Images - iStock19 novembro 2024
-
☊ Angry Cat Soundboard19 novembro 2024
-
Pin on speech19 novembro 2024
você pode gostar
-
Como cadastrar ou criar uma conta do BOL Mail - MundoContas19 novembro 2024
-
Petição para tirar atriz do filme Aquaman recebeu 3 milhões de assinaturas19 novembro 2024
-
Komunita služby Steam :: Návod :: Downloading a CS:GO Custom Map19 novembro 2024
-
Pokemon In Action (+ Digimon) — Zekrom used Fusion Bolt! ~ Black / White Movie19 novembro 2024
-
Loja Vapity - Reclame Aqui19 novembro 2024
-
Tomorrow Is in Your Hands: Death Stranding Available August 23 with PC Game Pass - Xbox Wire19 novembro 2024
-
Classroom of the Elite - Temporada 219 novembro 2024
-
The 10 Most Popular Female Anime Characters Of 2019 (According To Kono Light Novel ga Sugoi!)19 novembro 2024
-
MVP LEGENDARY GAMEPLAY FREYA, TOP 1 GLOBAL FREYA, MOBILE LEGENDS GAM19 novembro 2024
-
Máquinas de força19 novembro 2024