基于分层目标损失(SOL)的复杂背景图像多类高度和旋转不变目标检测

Indrajit Kar, S. Mukhopadhyay
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摘要

对不同高度和复杂背景的不同类型太阳能电池板的检测和监测难度尚未进行研究。不同的定位和复杂的背景导致误报和错误分类。然而,通过使用我们的技术,我们可以在不同的挑战性背景下精确区分三种不同类型的太阳能电池板。我们提出了一种切片对象损失,专门用于解决复杂背景下的模型学习问题、误报问题和定向对象定位问题。我们的工作基于流行的现有神经网络架构,并设计它们以适应复杂背景的区域目标检测。据我们对多太阳能电池板的了解,由于缺乏数据可用性,以前没有进行过探测。我们设计了神经网络来处理全尺寸图像并提取多高度的局部和全局特征,因此我们的模型都是高度不变的,可以检测任意方向的形状。为了证明切片损失函数产生了更好的结果,我们对应用前和应用后的SOL进行了比较研究。我们展示了明确的证据,表明我们的切片方法和切片物体损失(SOL)对多太阳能电池板检测WPV(热水器光伏),FPV(农场光伏)和SPV(单光伏)有显著影响。我们还展示了我们的方法和自定义丢失工作,用于其他复杂的多目标检测,例如从不同高度识别外壳,水和油箱。
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Multiclass Altitude and Rotation Invariant Object Detection Using Slicing Objectness Loss (SOL) For Images with Complex Background
The difficulty of detecting and monitoring diverse types of solar panels from various elevations and complex backgrounds has not been investigated. The varying orientation and complex backgrounds lead to false positives and erroneous classifications. However, by employing our technique, we could precisely distinguish between three diverse types of solar panels in various challenging backgrounds. We propose a slicing objectness loss specifically to address model learning issues, false positives, and oriented object localization on complex backgrounds. We based our work on popular existing neural network architectures and designed them to adapt to areal object detection for complex backgrounds. To our knowledge in the multi-solar panel, detection has not been conducted previously due to a lack of data availability. We have designed the neural network to process the full-size image and extract multi-Altitude local and global features thus our models are all altitude invariant and can detect shapes of arbitrary orientation. To demonstrate Slicing loss function produces superior results, we present a comparison study between pre and post-application SOL. We show clear evidence that our slicing approach and slicing objectness loss (SOL) has a significant effect on multi-solar panel detection WPV (water heater Photovoltaic), FPV (farm type photovoltaic), and SPV (Single Photovoltaic). We have also shown our approach and custom loss works for other complex multi-object detection e.g., identifying enclosures, water, and fuel tanks from different altitudes.
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