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Fast Convergence for Object Detection by Learning how to Combine Error Functions

Benjamin Schnieders, Karl Tuvls

发表年份
2018
引用次数
2

摘要

In this paper, we introduce an innovative method to improve the convergence speed and accuracy of object detection neural networks. Our approach, Converge-fast-auxnet, is based on employing multiple, dependent loss metrics and weighting them optimally using an on-line trained auxiliary network. Experiments are performed in the well-known RoboCup@Work challenge environment. A fully convolutional segmentation network is trained on detecting objects' pickup points. We empirically obtain an approximate measure for the rate of success of a robotic pickup operation based on the accuracy of the object detection network. Our experiments show that adding an optimally weighted Euclidean distance loss to a network trained on the commonly used Intersection over Union (IoU) metric reduces the convergence time by 42.48%. The estimated pickup rate is improved by 39.90%. Compared to state-of-the-art task weighting methods, the improvement is 24.5% in convergence, and 15.8% on the estimated pickup rate.

关键词

Convergence (economics)PickupComputer scienceWeightingIntersection (aeronautics)Artificial intelligenceObject detectionMetric (unit)Rate of convergenceConvolutional neural network

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