Environmental analysis is essential for understanding ecological changes and assessing ecosystem health. One effective method for monitoring these environments is the study of natural soundscapes, particularly the vocalizations of birds. Birds are integral to ecosystems, and changes in their calls can signal shifts in biodiversity, habitat quality, and climate conditions. This project explores the use of bird sounds for environmental assessment, utilizing advanced audio processing and pattern recognition techniques. This study involves collecting and analysing bird vocalizations to extract valuable insights about environmental conditions. Audio recordings are processed to identify species, classify calls, and detect anomalies. Various computational methods, such as signal processing and machine learning, enhance the precision of sound-based analyses. By studying these acoustic patterns, researchers can better understand ecological trends and identify potential environmental disturbances. This approach provides a non-invasive, cost-effective, and scalable method for monitoring biodiversity. In contrast to traditional field surveys that require extensive time and resources, automated analysis of bird sounds offers a continuous and efficient way to track environmental changes. The results from these studies can strengthen conservation efforts, support habitat preservation strategies, and inform policy decisions aimed at protecting natural ecosystems. By harnessing technology for environmental analysis, this project highlights the potential of bio-acoustic monitoring as an innovative tool for ecological research. The fusion of sound analysis with modern computational techniques paves the way for greater understanding and preservation of the natural world.
Ecological changes, Assessing ecosystem health, harnessing