Feature pyramids are widely exploited by both the state-of-the-art one-stage object detectors (\textit{e.g.}, DSSD, RetinaNet, RefineDet) and the two-stage object detectors (\textit{e.g.}, Mask R-CNN, DetNet) to alleviate the problem arising from scale variation across object instances. Although these object detectors with feature pyramids achieve encouraging results, they have some limitations due to that they only simply construct the feature pyramid according to the inherent multi-scale, pyramidal architecture of the backbones which are actually designed for object classification task. Newly, in this work, we present a method called Multi-Level Feature Pyramid Network (MLFPN) to construct more effective feature pyramids for detecting objects of different scales. First, we fuse multi-level features (\textit{i.e.} multiple layers) extracted by backbone as the base feature. Second, we feed the base feature into a block of alternating joint Thinned U-shape Modules and Feature Fusion Modules and exploit the decoder layers of each u-shape module as the features for detecting objects. Finally, we gather up the decoder layers with equivalent scales (sizes) to develop a feature pyramid for object detection, in which every feature map consists of the layers (features) from multiple levels. To evaluate the effectiveness of the proposed MLFPN, we design and train a powerful end-to-end one-stage object detector we call M2Det by integrating it into the architecture of SSD, which gets better detection performance than state-of-the-art one-stage detectors. Specifically, on MS-COCO benchmark, M2Det achieves AP of 41.0 at speed of 11.8 FPS with single-scale inference strategy and AP of 44.2 with multi-scale inference strategy, which is the new state-of-the-art results among one-stage detectors. The code will be made available on \url{https://github.com/qijiezhao/M2Det.
翻译:最先进的一阶段天体探测器(\ textit{ 例如 ) 、 DSD、 RetinaNet、 RefineDet) 和两阶段天体探测器(\ textit{ 如} 、 Mask R- CNN、 DetNet) 广泛利用地貌金字塔来缓解不同天体规模变化引起的问题。 虽然这些具有地貌金字塔的物体探测器取得了令人鼓舞的结果, 但由于它们仅仅根据实际为对象分类任务设计的内在多级主体骨的金字塔结构(\ textitit{ 如} 、 DSSSDD、 RetinNetNet、 RefineDet) 和两阶段天体物体探测器(\ text fetrial Pyramid Net Net) 来构建一个更有效的地体格。 首先, 我们将骨架的多层特征(\ listaltical) 作为基本特征。 其次, 我们将基底基点的成成块结构的交替结构, 由超级的Ushafet 和Fet 对象端天体形天体标的模组成44, 利用每级的解层的地层 级探测器级探测器级探测器的一级, 、 级探测器的底结构在每层中进行一个级的测测算的一级的测制成一个等层, 。