Multi-Scale Object Detection with Feature Fusion and Region Objectness Network

W. Guan, Yuexian Zou, Xiaoqun Zhou
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引用次数: 8

Abstract

Though tremendous progresses have been made in object detection due to the deep convolutional networks, one of the remaining challenges is the multi-scale object detection(MOD). To improve the performance of MOD task, we take Faster region-based CNN (Faster R-CNN) framework and work on two specific problems: get more accurate localization for small objects and eliminate background region proposals, when there are many small objects exist. Specifically, a feature fusion module is introduced which jointly utilize the high-abstracted semantic knowledge captured in higher layer and details information captured in the lower layer to generate a fine resolution feature maps. As a result, the small objects can be localized more accurately. Besides, a novel Region Objectness Network is developed for generating effective proposals which are more likely to cover the target objects. Extensive experiments have been conducted over UA-DETRAC car datasets, as well as a self-built bird dataset (BSBDV 2017) collected from Shenzhen Bay coastal wetland, which demonstrate the competitive performance and the comparable detection speed of our proposed method.
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基于特征融合和区域目标网络的多尺度目标检测
虽然深度卷积网络在目标检测方面取得了巨大的进步,但多尺度目标检测(MOD)仍然是一个挑战。为了提高MOD任务的性能,我们采用Faster region-based CNN (Faster R-CNN)框架,在小目标多的情况下,对小目标进行更精确的定位和消除背景区域建议两个具体问题进行了研究。具体来说,引入特征融合模块,将高层捕获的高度抽象的语义知识和低层捕获的细节信息结合起来,生成精细分辨率的特征地图。因此,可以更准确地定位小物体。此外,为了生成更有可能覆盖目标对象的有效建议,还开发了一种新的区域目标网络。在UA-DETRAC汽车数据集以及深圳湾滨海湿地自建鸟类数据集(BSBDV 2017)上进行了大量实验,证明了我们提出的方法具有竞争力的性能和相当的检测速度。
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