High-Resolution UAV Image Generation for Sorghum Panicle Detection

IEEE Conference on Computer Vision and Pattern Recognition(2022)

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摘要
The number of panicles (or heads) of Sorghum plants is an important phenotypic trait for plant development and grain yield estimation. The use of Unmanned Aerial Vehicles (UAVs) enables the capability of collecting and analyzing Sorghum images on a large scale. Deep learning can provide methods for estimating phenotypic traits from UAV images but requires a large amount of labeled data. The lack of training data due to the labor-intensive ground truthing of UAV images causes a major bottleneck in developing methods for Sorghum panicle detection and counting. In this paper, we present an approach that uses synthetic training images from generative adversarial networks (GANs) for data augmentation to enhance the performance of Sorghum panicle detection and counting. Our method can generate synthetic high-resolution UAV RGB images with panicle labels by using image-to-image translation GANs with a limited ground truth dataset of real UAV RGB images. The results show the improvements in panicle detection and counting using our data augmentation approach.
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关键词
phenotypic traits,UAV images,training data,labor-intensive ground truthing,Sorghum panicle detection,synthetic training images,panicle labels,image-to-image translation GANs,UAV RGB images,high-resolution UAV image generation,Sorghum plants,important phenotypic trait,plant development,grain yield estimation,Unmanned Aerial Vehicles,UAVs,collecting analyzing Sorghum images
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