Abstract

Among the many deep learning methods, the convolutional neural network (CNN) model has an excellent performance in image recognition. Research on identifying and classifying image datasets using CNN is ongoing. Animal species recognition and classification with CNN is expected to be helpful for various applications. However, sophisticated feature recognition is essential to classify quasi-species with similar features, such as the quasi-species of parrots that have a high color similarity. The purpose of this study is to develop a vision-based mobile application to classify endangered parrot species using an advanced CNN model based on transfer learning (some parrots have quite similar colors and shapes). We acquired the images in two ways: collecting them directly from the Seoul Grand Park Zoo and crawling them using the Google search. Subsequently, we have built advanced CNN models with transfer learning and trained them using the data. Next, we converted one of the fully trained models into a file for execution on mobile devices and created the Android package files. The accuracy was measured for each of the eight CNN models. The overall accuracy for the camera of the mobile device was 94.125%. For certain species, the accuracy of recognition was 100%, with the required time of only 455 ms. Our approach helps to recognize the species in real time using the camera of the mobile device. Applications will be helpful for the prevention of smuggling of endangered species in the customs clearance area.

Highlights

  • With the development of information technology, deep learning-based image processing and classification is widely used in various applications [1]

  • In this study, we hypothesize that the convolutional neural network (CNN) models with transfer learning can classify the quasispecies well despite similar colors and patterns. is experiment used 14420 parrot images. e parrots were of four species, and we used 3605 images per species

  • The models that were initialized with the ImageNet weights and had nontrainable convolutional layers outperformed the others

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Summary

Introduction

With the development of information technology, deep learning-based image processing and classification is widely used in various applications [1]. The demand for image classification is increasing [2]. Deep learningbased classifiers, such as a convolutional neural network (CNN), increase the classification performance for various objects [2]. Systems that automatically identify and classify animal species have become essential, for the study of endangered species [4]. During the customs clearance of animals and plants, humans can directly examine the species to identify individual species, but this can be inefficient in terms of time and cost

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