CVJun 26, 2017

Deep Network Flow for Multi-Object Tracking

arXiv:1706.08482v1213 citations
Originality Incremental advance
AI Analysis

This addresses the tedious hand-designing of costs in multi-object tracking for computer vision applications, representing an incremental improvement by automating cost function learning.

The paper tackled the problem of learning features for network-flow-based data association in multi-object tracking by expressing the optimum of a smoothed network flow as a differentiable function, enabling end-to-end learning of cost functions that outperformed hand-crafted costs in all settings.

Data association problems are an important component of many computer vision applications, with multi-object tracking being one of the most prominent examples. A typical approach to data association involves finding a graph matching or network flow that minimizes a sum of pairwise association costs, which are often either hand-crafted or learned as linear functions of fixed features. In this work, we demonstrate that it is possible to learn features for network-flow-based data association via backpropagation, by expressing the optimum of a smoothed network flow problem as a differentiable function of the pairwise association costs. We apply this approach to multi-object tracking with a network flow formulation. Our experiments demonstrate that we are able to successfully learn all cost functions for the association problem in an end-to-end fashion, which outperform hand-crafted costs in all settings. The integration and combination of various sources of inputs becomes easy and the cost functions can be learned entirely from data, alleviating tedious hand-designing of costs.

Foundations

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