IDENTIFYING EPIPHYTES IN DRONES PHOTOS WITH A CONDITIONAL GENERATIVE ADVERSARIAL NETWORK (C-GAN)

A. Shashank, V. Sajithvariyar, V. Sowmya, K. Soman, R. Sivanpillai, G. Brown
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引用次数: 11

Abstract

Abstract. Unmanned Aerial Vehicle (UAV) missions often collect large volumes of imagery data. However, not all images will have useful information, or be of sufficient quality. Manually sorting these images and selecting useful data are both time consuming and prone to interpreter bias. Deep neural network algorithms are capable of processing large image datasets and can be trained to identify specific targets. Generative Adversarial Networks (GANs) consist of two competing networks, Generator and Discriminator that can analyze, capture, and copy the variations within a given dataset. In this study, we selected a variant of GAN called Conditional-GAN that incorporates an additional label parameter, for identifying epiphytes in photos acquired by a UAV in forests within Costa Rica. We trained the network with 70%, 80%, and 90% of 119 photos containing the target epiphyte, Werauhia kupperiana (Bromeliaceae) and validated the algorithm’s performance using a validation data that were not used for training. The accuracy of the output was measured using structural similarity index measure (SSIM) index and histogram correlation (HC) coefficient. Results obtained in this study indicated that the output images generated by C-GAN were similar (average SSIM = 0.89–0.91 and average HC 0.97–0.99) to the analyst annotated images. However, C-GAN had difficulty to identify when the target plant was away from the camera, was not well lit, or covered by other plants. Results obtained in this study demonstrate the potential of C-GAN to reduce the time spent by botanists to identity epiphytes in images acquired by UAVs.
用条件生成对抗网络(c-gan)识别无人机照片中的附生植物
摘要无人机(UAV)任务经常收集大量的图像数据。然而,并不是所有的图像都有有用的信息,或者具有足够的质量。手动对这些图像进行分类并选择有用的数据既耗时又容易产生解释器偏见。深度神经网络算法能够处理大型图像数据集,并且可以通过训练来识别特定的目标。生成对抗网络(GANs)由两个相互竞争的网络,生成器和鉴别器组成,可以分析,捕获和复制给定数据集中的变化。在这项研究中,我们选择了一种称为条件GAN的变体,它包含了一个额外的标签参数,用于识别哥斯达黎加森林中无人机获取的照片中的附生植物。我们使用包含目标附生植物Werauhia kupperiana (Bromeliaceae)的119张照片中的70%,80%和90%来训练网络,并使用未用于训练的验证数据验证算法的性能。采用结构相似指数(SSIM)指数和直方图相关系数(HC)来衡量输出的准确性。本研究结果表明,C-GAN生成的输出图像与分析师注释的图像相似(平均SSIM = 0.89-0.91,平均HC = 0.97-0.99)。然而,C-GAN在目标植物远离相机、光线不佳或被其他植物覆盖时难以识别。本研究获得的结果表明,C-GAN可以减少植物学家在无人机获取的图像中识别附生植物的时间。
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