Along with current multi-scale based detectors, Feature Aggregation and Enhancement (FAE) modules have shown superior performance gains for cutting-edge object detection. However, these hand-crafted FAE modules show inconsistent improvements on face detection, which is mainly due to the significant distribution difference between its training and applying corpus, COCO vs. WIDER Face. To tackle this problem, we essentially analyse the effect of data distribution, and consequently propose to search an effective FAE architecture, termed AutoFAE by a differentiable architecture search, which outperforms all existing FAE modules in face detection with a considerable margin. Upon the found AutoFAE and existing backbones, a supernet is further built and trained, which automatically obtains a family of detectors under the different complexity constraints. Extensive experiments conducted on popular benchmarks, WIDER Face and FDDB, demonstrate the state-of-the-art performance-efficiency trade-off for the proposed automatic and scalable face detector (ASFD) family. In particular, our strong ASFD-D6 outperforms the best competitor with AP 96.7/96.2/92.1 on WIDER Face test, and the lightweight ASFD-D0 costs about 3.1 ms, more than 320 FPS, on the V100 GPU with VGA-resolution images.
翻译:与目前基于多种规模的探测器、地形聚合和增强模块一道,这些手工制作的FAE模块在尖端物体探测方面表现优异,但是,这些手工制作的FAE模块在面部探测方面表现出不协调的改进,这主要是由于其培训和应用程序、COCO诉WIDER Face之间的分布差异很大。为了解决这一问题,我们基本上分析了数据分配的影响,并因此提议通过一个不同的结构搜索,搜索一个有效的FAE结构,称为AutoFAE,它比所有现有的FAE模块在面对探测时表现优异,但差很大。在发现AutoFAE和现有骨干时,将进一步建立和培训一个超级网络,在复杂程度不同的限制下自动获得一组探测器。在流行基准、WADER Face和FDB上进行了广泛的实验,展示了拟议自动和可缩缩放面探测器(ASFFFFFFDA)家庭的最新性效率交易。特别是,我们强大的AS-DAFS-DA-DA图像与AP96.7/96/96.2/92.1和MDAFDFDFMDFS-DAS-DFMDAS-DFDMS-DFS-310MDFMDFS-DFS-DFDFDFDFS-DFS-DFDFMR的光比重度最轻度相比,测试。