We present a one-stage Fully Convolutional Line Parsing network (F-Clip) that detects line segments from images. The proposed network is very simple and flexible with variations that gracefully trade off between speed and accuracy for different applications. F-Clip detects line segments in an end-to-end fashion by predicting them with each line's center position, length, and angle. Based on empirical observation of the distribution of line angles in real image datasets, we further customize the design of convolution kernels of our fully convolutional network to effectively exploit such statistical priors. We conduct extensive experiments and show that our method achieves a significantly better trade-off between efficiency and accuracy, resulting in a real-time line detector at up to 73 FPS on a single GPU. Such inference speed makes our method readily applicable to real-time tasks without compromising any accuracy of previous methods. Moreover, when equipped with a performance-improving backbone network, F-Clip is able to significantly outperform all state-of-the-art line detectors on accuracy at a similar or even higher frame rate. Source code https://github.com/Delay-Xili/F-Clip.
翻译:我们展示了一个从图像中检测线条段的单阶段全变线线剖析网络(F-Clip),从图像中检测线条段。提议的网络非常简单灵活,具有各种差异,在不同应用程序的速率和准确率之间进行优异的交换。F-Clip用每条线的中心位置、长度和角度对线条段进行端到端的预测,从而以端到端的方式对线条段进行检测。根据对真实图像数据集中线角分布的实证观测,我们进一步定制了我们全变网络的卷心网的设计,以有效地利用这些统计前科。我们进行了广泛的实验,并表明我们的方法在效率和准确性之间实现了显著的平衡,从而在单一的GPU上产生了高达73 FPS的实时线条探测器。这种推论速度使我们的方法很容易适用于实时任务,而不会损害以往方法的任何准确性。此外,如果配备了改进性能的主干网,F-Clip能够大大超越所有以类似甚至更高框架速率的状态-线探测器。