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Fully Convolutional Network With Densely Feature Fusion Models for Object Detection

机译:具有密集特征融合模型的全卷积网络用于目标检测

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We present Fully Convolutional Networks with Densely Feature Fusion Models (DFF-FCN) which is an effective framework for multi-scale object detection. DFF-FCN reuses the inherent convolutional hierarchical features of regular convolutional neural networks from both forward and backward directions so that the highly semantic features incorporate with shallow high-resolution features complementarily. We propose a new fully convolutional network to build feature pyramids to construct semantic features at all levels using a single neural network so that the multi-scale features all have enough detail and semantic information for object detection tasks. We also add another branch to predict objectness in order to reduce the searching space of objects. Our network runs at the speed of 20 FPS (frame per second) which is faster than Faster R-CNN counterpart and our method gets better detection performance.
机译:我们提供完全卷积的网络,具有密集的融合模型(DFF-FCN),这是多尺度对象检测的有效框架。 DFF-FCN从前向和向后方向重用常规卷积神经网络的固有卷积分层特征,使得高度语义特征互补的浅高分辨率功能。我们提出了一个新的全新卷积网络来构建特征金字塔,以使用单个神经网络构建各级的语义特征,以便多尺度功能都有足够的细节和对象检测任务的语义信息。我们还添加另一个分支以预测对象以减少对象的搜索空间。我们的网络以20 FPS(帧每秒帧)运行,其比R-CNN对应的更快,我们的方法获得更好的检测性能。

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