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object recognition in compressed imagery

机译:压缩图像中的目标识别

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Image-based applications can save time and space by operating on compressed data. The problem is that most mid-- and high-level image operations, such as object recognition, are formulated as sequences of operations in the image domain. Such methods need direct access to pixel information as a starting point, but the pixel information in a compressed image stream is not immediately accessible. In this paper we show how to perform object recognition directly on compressed images (JPEG) and index frames from video streams (MPEG I--frames) without recovering explicit pixel information. The approach uses eigenvectors constructed from compressed image data. Our performance results show that a five-fold speedup can be gained by using compressed data.
机译:基于图像的应用程序可以通过对压缩数据进行操作来节省时间和空间。问题在于,大多数中级和高级图像操作(例如对象识别)被表述为图像域中的操作序列。这样的方法需要直接访问像素信息作为起点,但是不能立即访问压缩图像流中的像素信息。在本文中,我们展示了如何直接在视频流(MPEG I--帧)的压缩图像(JPEG)和索引帧上执行对象识别,而无需恢复显式的像素信息。该方法使用从压缩图像数据构造的特征向量。我们的性能结果表明,使用压缩数据可以使速度提高五倍。

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