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An improved lightweight model based on Mask R-CNN for satellite component recognition

机译:基于掩模R-CNN的卫星成分识别改进的轻量级模型

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Satellite component recognition has always been a hot topic in the field of orbital services. However, it is very challenging to segment the components such as satellite body, solar panel, and antenna in pixel-level accurately due to the poor illumination condition and the scarce image for spaceborne observation. Based on the Mask R-CNN, this paper proposes a lightweight instance segmentation model for satellite component segmentation and recognition. It improves residual module by using deep separable convolution, replacing nonlinear activation function with linear one after deep separable convolution and deleting the dimensionality reduction convolution layer in residual module. Also, the training datasets consist of the synthetic images generated by the 3D max software and the C-DCGAN based image generation method through several known satellite CAD models. The simulation experiments are carried out and the results show that the proposed method can effectively recognize the typical satellite components and achieve better performance than the compared model in aspects of accuracy, model parameters, and model size.
机译:卫星成分识别始终是轨道服务领域的热门话题。然而,由于较差的照明条件和空间播种图像,将卫星体如卫星体,太阳能电池板和天线等部件分段为像素级别,这是非常具有挑战性的。基于掩模R-CNN,本文提出了一种用于卫星组分分割和识别的轻量级实例分段模型。它通过使用深层可分离的卷积来改善残留模块,在深层可分离的卷积之后用线性替换非线性激活功能,并删除残余模块中的维数减少卷积层。此外,训练数据集包括通过若干已知的卫星CAD模型由3D Max软件和基于C-DCGAN的图像生成方法生成的合成图像。进行了仿真实验,结果表明,该方法可以有效地识别典型的卫星组件,并在精度,模型参数和模型尺寸方面的比较模型中实现更好的性能。

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