深度交互式区域分割和字幕

Ali Sharifi Boroujerdi, M. Khanian, M. Breuß
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引用次数: 7

摘要

基于密集图像字幕的最新发展,现在可以用标题描述拍摄场景中的每个物体,而物体是由边界框确定的。然而,由于存在许多重叠的边界框,用户对这种输出的解释不是微不足道的。此外,在当前的字幕框架中,用户无法使用个人偏好来排除不感兴趣的区域。在本文中,我们提出了一种新的混合深度学习架构,用于交互式区域分割和字幕,用户能够指定图像中应该突出显示和描述的任意区域。为此,我们在我们的特殊训练数据上训练了三种不同的高度深度架构来识别用户意图区域(UIR)。同时,利用密集图像字幕模型,通过绘制边界框来定位场景中所有的物体,并生成它们的语言描述。在我们的融合方法中,检测到的UIR将用最佳匹配边界框的标题进行解释。据我们所知,这是第一次提供如此全面的输出。我们的实验表明,在几个著名的分割基准上,所提出的方法优于最先进的交互式分割方法。此外,将边界框替换为交互式分割的结果,可以更好地理解密集图像字幕输出,并提高目标定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Interactive Region Segmentation and Captioning
Based on recent developments in dense image captioning, it is now possible to describe every object of a photographed scene with a caption while objects are determined by bounding boxes. However, the user interpretation of such an output is not trivial due to the existence of many overlapping bounding boxes. Furthermore, in current captioning frameworks, the user is not able to involve personal preferences to exclude areas that are out of interest. In this paper, we propose a novel hybrid deep learning architecture for interactive region segmentation and captioning whereby the user is able to specify an arbitrary region of the image that should be highlighted and described. To this end, we trained three different highly deep architectures on our special training data to identify the User Intention Region (UIR). In parallel, a dense image captioning model is utilized to locate all the objects of the scene by drawing bounding boxes and produce their linguistic descriptions. During our fusion approach, the detected UIR will be explained with the caption of the best match bounding box. To the best of our knowledge, this is the first work that provides such a comprehensive output. Our experiments show the superiority of the proposed approach over state-of-the-art interactive segmentation methods on several well-known segmentation benchmarks. In addition, replacement of the bounding boxes with the result of the interactive segmentation leads to a better understanding of the dense image captioning output as well as an enhancement in object localization accuracy.
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