LSTM-based Vocalization Analysis for Identification and Classification of Avian Acoustics
Marri Umarani, Senthilkumar Meyyappan, G. Vallathan, G. Karthi
Abstract
This research emphasizes the importance of bird vocalization and introduces an innovative method for identifying and categorizing bird species using deep learning techniques. Bird vocalizations play a critical role in bird communication, enabling individuals to convey crucial information about their identity, whereabouts, and intentions. Bird songs typically relate to mating and territorial behaviors, while calls serve for intra-group communication or danger signaling. The LSTM based Vocalization method has introduced for bird species identification and classification based on vocalizations holds considerable promise for real-world applications in wildlife conservation and ecological monitoring. The proposed system also employs diverse neural network architectures to discern the distinctive features of various bird species from their audio signals. The accuracy of classification is assessed on a vast dataset of bird sounds, showcasing the efficacy of the proposed method. The paper also conducts a comparative analysis of different deep learning architectures for bird species classification, elucidating their respective strengths and weaknesses. Overall, this research paper enriches our comprehension of bird vocalization and presents a pragmatic approach for identifying and categorizing bird species based on their sounds.