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Effect of Annotation and Loss Function on Epiphyte Identification using Conditional Generative Adversarial Network

机译:注释性和损失功能对使用条件生成对抗网络的近骨识别的影响

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The deep neural networks are capable of processing large amounts of data for image processing applications like classification, segmentation and identification etc. Conditional- Generative Adversarial Network (C-GAN) is an example of Deep Learning (DL)-based image processing algorithm that is used widely for identifying targets in images. In a Deep Learning based image processing application the quality of the input image plays an important role. The quality and variations within the dataset helps the neural network filters to derive the best features for the classification and identification of the target in the image. Many deep learning approaches will have a preprocessing pipeline which improves the quality of the input training data. The objective of this study was to evaluate the effect of preprocessing methods to improve C-GAN’s ability to detect epiphytes in images acquired by Unmanned Aerial Vehicles (UAVs). These methods include 1) trimming the training images to include mostly the target plant, 2) generating annotation images with a thresholding technique, and 3) incorporating binary cross entropy loss function. Results obtained from this study shows that the percent occupancy of input images and annotation method plays an important role in identifying the target plant.
机译:深度神经网络能够处理大量数据,用于分类,分割和识别等图像处理应用等。有条件的对抗性网络(C-GaN)是基于深度学习(DL)的图像处理算法的示例广泛用于识别图像中的目标。在基于深度学习的图像处理应用程序中,输入图像的质量扮演重要作用。数据集中的质量和变体有助于神经网络过滤器导出图像中目标的分类和识别的最佳功能。许多深度学习方法将具有预处理管道,其提高了输入培训数据的质量。本研究的目的是评估预处理方法改善C-GaN检测由无人机(无人机)获取的图像中腰果硬质的能力的效果。这些方法包括1)修剪训练图像,包括主要包括具有阈值化技术的指向图像,以及包括二进制交叉熵损耗函数的注释图像。本研究获得的结果表明,输入图像和注释方法的占占百分比在识别目标植物方面发挥着重要作用。

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