Bird Species Classification Using Deep Learning
Pureti Anusha, Kundurthi ManiSai
Abstract
Many bird species are becoming more difficult to locate, and even when they are, it may be difficult to anticipate their classification. Observed from a distance, birds may be seen in a wide range of sizes, shapes, colors, and orientations. The photographs show a great deal more variation in the bird's breed than the auditory categorization. Using photos, people are better able to discriminate between birds. Because of this, the Caltech-UCSD Birds 200 dataset is used for both training and validation in this technique. Deep convolution neural networks (DCNN) are used to turn an image into a grayscale representation, while the tensor flow is used to construct an autograph with a large number of nodes that can be compared. A rating table is developed as a consequence of evaluating the numerous entry points to the validation data. By examining the scoreboard and selecting the highest rating, it may be able to anticipate the required bird group. A look at the dataset (CUB-200-2011) reveals that the system has a bird identification accuracy of 89 percent. Linux and the Tensorflow framework were used in the study.