事件照片流分割的隐马尔可夫模型

Jesse Prabawa Gozali, Min-Yen Kan, H. Sundaram
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引用次数: 17

摘要

照片流是按时间顺序排列的照片。大多数现有的照片流分割方法假设一个照片流由来自多个事件的照片组成,它们的目标是生成一组照片,每组照片对应一个事件,即它们执行自动分类。即使这些照片是按事件分组的,从每个事件的大量照片中筛选也是很麻烦的。为了使每个事件的照片更易于管理,我们提出了一个事件照片流的照片流分割方法-单个事件的照片按时间顺序排列-生成一组照片,每个照片对应于事件中值得拍照的时刻。我们的方法是基于一个隐马尔可夫模型,该模型的参数来自时间、EXIF元数据和视觉信息,这些信息来自1)未标记、未分割的事件照片流的训练数据和2)我们想要分割的事件照片流。在对来自28个个人照片集的5000多张照片进行的实验中,我们的方法优于所有6个基线,具有统计学显著性(p <;0.10,最佳基线,p <;0.005与其他)。
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Hidden Markov Model for Event Photo Stream Segmentation
A photo stream is a chronological sequence of photos. Most existing photo stream segmentation methods assume that a photo stream comprises of photos from multiple events and their goal is to produce groups of photos, each corresponding to an event, i.e. they perform automatic albuming. Even if these photos are grouped by event, sifting through the abundance of photos in each event is cumbersome. To help make photos of each event more manageable, we propose a photo stream segmentation method for an event photo stream - the chronological sequence of photos of a single event - to produce groups of photos, each corresponding to a photo-worthy moment in the event. Our method is based on a hidden Markov model with parameters learned from time, EXIF metadata, and visual information from 1) training data of unlabelled, unsegmented event photo streams and 2) the event photo stream we want to segment. In an experiment with over 5000 photos from 28 personal photo sets, our method outperformed all six baselines with statistical significance (p <; 0.10 with the best baseline and p <; 0.005 with the others).
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