论文标题
使用CNN的野生动物分类器
Wild Animal Classifier Using CNN
论文作者
论文摘要
随着环境的恶化,野生动物的分类和鉴定已变得越来越重要,技术是变革的推动者,它通过新颖的解决方案增强了这一过程。计算机视觉是一种在视觉输入上使用人工智能和机器学习模型的能力的技术。卷积神经网络(CNN)具有多个层,这些层具有不同的权重,以预测特定输入的目的。但是,分类的先例是由图像处理技术设置的,这些技术提供了几乎理想的输入图像,从而产生最佳的结果。图像分割是一种如此广泛使用的图像处理方法,它可以清楚地界定图像中感兴趣的区域,无论是区域还是对象。 CNN的效率与训练前完成的预处理有关。此外,图像源中的异质性不利于CNN的性能。因此,异质性消除的附加功能是通过图像处理技术执行的,引入了一定级别的一致性,从而为出色的特征提取和最终在分类中设定了基调。
Classification and identification of wild animals for tracking and protection purposes has become increasingly important with the deterioration of the environment, and technology is the agent of change which augments this process with novel solutions. Computer vision is one such technology which uses the abilities of artificial intelligence and machine learning models on visual inputs. Convolution neural networks (CNNs) have multiple layers which have different weights for the purpose of prediction of a particular input. The precedent for classification, however, is set by the image processing techniques which provide nearly ideal input images that produce optimal results. Image segmentation is one such widely used image processing method which provides a clear demarcation of the areas of interest in the image, be it regions or objects. The Efficiency of CNN can be related to the preprocessing done before training. Further, it is a well-established fact that heterogeneity in image sources is detrimental to the performance of CNNs. Thus, the added functionality of heterogeneity elimination is performed by the image processing techniques, introducing a level of consistency that sets the tone for the excellent feature extraction and eventually in classification.