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Combining static and dynamic features using neural networks and edge fusion for video object extraction

机译:使用神经网络和边缘融合将静态和动态特征相结合以提取视频对象

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摘要

Semantic object representation is an important step for digital multimedia applications such as object-based coding, content-based access and manipulations. The authors propose an image sequence segmentation scheme which provides region information for the semantic object representation of those applications. The objective is to develop a hardware-friendly segmentation algorithm by combining static and dynamic features simultaneously in one scheme. In the initial stage, a multiple feature space is transformed to one-dimensional label space by using self-organising feature map (SOFM) neural networks. The next stage is an edge fusion process in which edge information is incorporated into the neural network outputs to generate more precisely located boundaries of segmentation. The proposed algorithm differs from existing methods as follows: it can segment textured images with low-dimensional features; leads to more meaningful segmentation region boundaries; and is easier to map into hardware than existing methods. Experimental results are compared with an existing segmentation method using evaluation metrics to clarify the advantages of the proposed algorithm objectively.
机译:语义对象表示对于诸如基于对象的编码,基于内容的访问和操作之类的数字多媒体应用来说是重要的一步。作者提出了一种图像序列分割方案,该方案为那些应用程序的语义对象表示提供了区域信息。目的是通过在一个方案中同时组合静态和动态特征来开发一种硬件友好的分割算法。在初始阶段,通过使用自组织特征图(SOFM)神经网络将多特征空间转换为一维标签空间。下一步是边缘融合过程,其中将边缘信息合并到神经网络输出中,以生成更精确定位的分段边界。所提出的算法与现有方法有如下不同:它可以分割具有低维特征的纹理图像;导致更有意义的分割区域边界;并且比现有方法更容易映射到硬件。将实验结果与使用评估指标的现有分割方法进行比较,以客观地阐明所提出算法的优势。

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