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Scene Text Detection with Adaptively Weighted Descriptors in Opponent Color Space

机译:场景文本检测与对手颜色空间中的自适应加权描述符

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This paper involves the challenging problem of text localization in complex scenes. Maximally Stable Extremal Regions (MSER) has recently been extensively employed in text detection methods. However, most efforts for MSERs are only put into a single intensity image. MSERs are therefore subjective to cases like low contrast and uneven lighting etc. In this paper, we investigate the opponent color theory and perform attempting to evaluate the benefit of MSER extraction on different opponent color channels. Furthermore, we propose to apply kernel descriptors for text classification and multi-kernel learning to learn relative weights for features. We have experimented our proposed strategy on 'Robust Reading Competition' dataset distributed by International Conference on Document Analysis and Recognition (ICDAR) 2003 and 2011. The experiment results demonstrate its effectiveness and efficiency. We can achieve general equivalently good performance with several compared state-of-the-art methods at lower computation cost.
机译:本文涉及复杂场景中文本定位的挑战问题。最近在文本检测方法中广泛使用最大稳定的极端区域(MSER)。然而,MSERS的大多数努力仅放入一个强度图像。因此,MSERS是具有低对比度和不均匀照明等的案例。在本文中,我们研究了对手的颜色理论,并试图评估MSER提取对不同对手颜色通道的益处。此外,我们建议应用文本分类和多核学习的内核描述符,以学习特征的相对权重。我们在2003年和2011年度的国际会议上分发了我们提出的关于“强大的阅读竞赛”数据集的拟议战略(ICDAR)2003年和2011年。实验结果表明其有效性和效率。我们可以以较低的计算成本实现一般的相应性能等效。

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