Semi-supervised hierarchical semantic object parsing

Jalal Mirakhorli, H. Amindavar
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引用次数: 6

Abstract

Models based on Convolutional Neural Networks (CNNs) have been proven very successful for semantic segmentation and object parsing that yield hierarchies of features. Our key insight is to build convolutional networks that take input of arbitrary size and produce object parsing output with efficient inference and learning. In this work, we focus on the task of instance segmentation and parsing which recognizes and localizes objects down to a pixel level base on deep CNN. Therefore, unlike some related work, a pixel cannot belong to multiple instances and parsing. Our model is based on a deep neural network trained for object masking that supervised with input image and follow incorporates a Conditional Random Field (CRF) with end-to-end trainable piecewise order potentials based on object parsing outputs. In each CRF unit we designed terms to capture the short range and long range dependencies from various neighbors. The accurate instance-level segmentation that our network produce is reflected by the considerable improvements obtained over previous work at high APr thresholds. We demonstrate the effectiveness of our model with extensive experiments on challenging dataset subset of PASCAL VOC 2012.
半监督分层语义对象解析
基于卷积神经网络(cnn)的模型已经被证明非常成功地用于语义分割和对象解析,从而产生特征层次结构。我们的关键见解是构建卷积网络,该网络可以接受任意大小的输入,并通过有效的推理和学习产生对象解析输出。在这项工作中,我们专注于基于深度CNN的实例分割和解析任务,该任务将对象识别和定位到像素级。因此,与一些相关的工作不同,一个像素不能属于多个实例和解析。我们的模型基于一个深度神经网络,该网络训练用于对象掩蔽,该网络对输入图像进行监督,并结合一个基于对象解析输出的端到端可训练的分段顺序势的条件随机场(CRF)。在每个CRF单元中,我们设计了术语来捕获来自各种邻居的短程和远程依赖关系。我们的网络产生的准确的实例级分割反映在在高APr阈值下比以前的工作获得了相当大的改进。我们在具有挑战性的PASCAL VOC 2012数据集子集上进行了大量实验,证明了该模型的有效性。
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