TL;DR
This paper introduces a positive RoI generator for balanced training of object detectors, addressing IoU bias and class imbalance, leading to improved detection performance on Pascal VOC and MS COCO datasets.
Contribution
A novel positive RoI generator that simulates various sampling strategies, enabling analysis and improved training of two-stage object detectors.
Findings
IoU imbalance negatively impacts performance
Hard positive mining benefits certain IoU distributions
Addressing class imbalance improves detection accuracy
Abstract
Two-stage deep object detectors generate a set of regions-of-interest (RoI) in the first stage, then, in the second stage, identify objects among the proposed RoIs that sufficiently overlap with a ground truth (GT) box. The second stage is known to suffer from a bias towards RoIs that have low intersection-over-union (IoU) with the associated GT boxes. To address this issue, we first propose a sampling method to generate bounding boxes (BB) that overlap with a given reference box more than a given IoU threshold. Then, we use this BB generation method to develop a positive RoI (pRoI) generator that produces RoIs following any desired spatial or IoU distribution, for the second-stage. We show that our pRoI generator is able to simulate other sampling methods for positive examples such as hard example mining and prime sampling. Using our generator as an analysis tool, we show that (i) IoU…
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Taxonomy
MethodsRegion Proposal Network · Softmax · Convolution · RoIPool · Faster R-CNN
