A few lightweight convolutional neural network (CNN) models have been recently designed for remote sensing object detection (RSOD). However, most of them simply replace vanilla convolutions with stacked separable convolutions, which may not be efficient due to a lot of precision losses and may not be able to detect oriented bounding boxes (OBB). Also, the existing OBB detection methods are difficult to constrain the shape of objects predicted by CNNs accurately. In this paper, we propose an effective lightweight oriented object detector (LO-Det). Specifically, a channel separation-aggregation (CSA) structure is designed to simplify the complexity of stacked separable convolutions, and a dynamic receptive field (DRF) mechanism is developed to maintain high accuracy by customizing the convolution kernel and its perception range dynamically when reducing the network complexity. The CSA-DRF component optimizes efficiency while maintaining high accuracy. Then, a diagonal support constraint head (DSC-Head) component is designed to detect OBBs and constrain their shapes more accurately and stably. Extensive experiments on public datasets demonstrate that the proposed LO-Det can run very fast even on embedded devices with the competitive accuracy of detecting oriented objects.
翻译:最近为遥感物体探测设计了一些轻量级神经神经网络(CNN)模型,最近为遥感物体探测设计了一些轻量级神经网络(RSOD)模型。然而,大多数模型只是用堆叠的相分离的相容变异来取代香草变异,由于大量精确损失,这些变异可能效率不高,而且可能无法探测定向捆绑箱(OBB)。此外,现有的OBB探测方法很难限制CNN准确预测的物体形状。在本文中,我们建议建立一个有效的轻量级物体探测器(LO-Det),具体地说,一个频道分离结构旨在简化堆叠的相分离变异变的复杂程度,而一个动态的接受场机制(DRF)的开发是为了保持高度准确性,办法是在降低网络复杂度时对卷动内核内核内核及其感测范围时,使CSA-DRF部件在保持高度精确性的同时优化了效率。然后,一个对称支持压力头(DSC-C-C)组件的设计是为了探测OBBB,并更精确地限制其形状。在公共数据定位上进行更精确和精确地进行广泛的广泛实验,在快速的物体上显示。