Probabilistic Models and Inference for Multi-View People Detection in Overlapping Depth Images

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https://library.oapen.org/bitstream/20.500.12657/57538/1/9783731511779.pdf
Author(s)
Wetzel, Johannes
Language
EnglishAbstract
In this work, the task of wide-area indoor people detection in a network of depth sensors is examined. In particular, we investigate how the redundant and complementary multi-view information, including the temporal context, can be jointly leveraged to improve the detection performance. We recast the problem of multi-view people detection in overlapping depth images as an inverse problem and present a generative probabilistic framework to jointly exploit the temporal multi-view image evidence.

