实时水火分类的LBP-Flow和混合编码

Konstantinos Avgerinakis, Panagiotis Giannakeris, A. Briassouli, A. Karakostas, S. Vrochidis, Y. Kompatsiaris
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引用次数: 2

摘要

视频中动态场景的分析是一项非常有用的任务,特别是对于洪水和火灾等自然灾害的检测和监控。在这项工作中,我们专注于现实世界动态场景理解的挑战性问题,其中视频包含在“野外”录制的动态纹理。这些视频具有很大的光照变化、复杂的运动、遮挡、摄像机运动以及显著的类内差异,因为同一类别的动态纹理的运动模式可能在真实世界的记录中有很大的变化。我们通过引入一种新的动态纹理描述符“局部二进制模式流”(LBP-flow)来解决这些问题,该描述符被证明能够准确地分类动态场景,这些场景的复杂运动模式难以使用现有的局部描述符分离,或者无法通过统计技术建模。LBP-flow建立在现有的局部二进制模式(LBP)描述符的基础上,通过提供低成本的外观和光流纹理表示来提高其表示能力。描述符统计量用Fisher向量编码,Fisher向量是一种信息丰富的中级描述符,随后使用神经网络来降低编码描述符的维数,提高编码描述符的可分辨性。提出的算法产生了一个高度精确的时空描述符,实现了非常低的计算成本,使我们的描述符部署在现实世界的监视和安全应用中。在具有挑战性的基准数据集上进行的实验表明,该方法的识别精度超过了目前最先进的动态纹理描述符。
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LBP-Flow and Hybrid Encoding for Real-Time Water and Fire Classification
The analysis of dynamic scenes in video is a very useful task especially for the detection and monitoring of natural hazards such as floods and fires. In this work, we focus on the challenging problem of real-world dynamic scene understanding, where videos contain dynamic textures that have been recorded in the "wild". These videos feature large illumination variations, complex motion, occlusions, camera motion, as well as significant intra-class differences, as the motion patterns of dynamic textures of the same category may be subject to large variations in real world recordings. We address these issues by introducing a novel dynamic texture descriptor, the "Local Binary Pattern-flow" (LBP-flow), which is shown to be able to accurately classify dynamic scenes whose complex motion patterns are difficult to separate using existing local descriptors, or which cannot be modelled by statistical techniques. LBP-flow builds upon existing Local Binary Pattern (LBP) descriptors by providing a low-cost representation of both appearance and optical flow textures, to increase its representation capabilities. The descriptor statistics are encoded with the Fisher vector, an informative mid-level descriptor, while a neural network follows to reduce the dimensionality and increase the discriminability of the encoded descriptor. The proposed algorithm leads to a highly accurate spatio-temporal descriptor which achieves a very low computational cost, enabling the deployment of our descriptor in real world surveillance and security applications. Experiments on challenging benchmark datasets demonstrate that it achieves recognition accuracy results that surpass State-of-the-Art dynamic texture descriptors.
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