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Papers/MoCaE: Mixture of Calibrated Experts Significantly Improve...

MoCaE: Mixture of Calibrated Experts Significantly Improves Object Detection

Kemal Oksuz, Selim Kuzucu, Tom Joy, Puneet K. Dokania

2023-09-26Object Detection In Aerial ImagesSemantic SegmentationOpen Vocabulary Object DetectionInstance SegmentationOriented Object Detectionobject-detectionObject Detection
PaperPDFCode(official)

Abstract

Combining the strengths of many existing predictors to obtain a Mixture of Experts which is superior to its individual components is an effective way to improve the performance without having to develop new architectures or train a model from scratch. However, surprisingly, we find that na\"ively combining expert object detectors in a similar way to Deep Ensembles, can often lead to degraded performance. We identify that the primary cause of this issue is that the predictions of the experts do not match their performance, a term referred to as miscalibration. Consequently, the most confident detector dominates the final predictions, preventing the mixture from leveraging all the predictions from the experts appropriately. To address this, when constructing the Mixture of Experts, we propose to combine their predictions in a manner which reflects the individual performance of the experts; an objective we achieve by first calibrating the predictions before filtering and refining them. We term this approach the Mixture of Calibrated Experts and demonstrate its effectiveness through extensive experiments on 5 different detection tasks using a variety of detectors, showing that it: (i) improves object detectors on COCO and instance segmentation methods on LVIS by up to $\sim 2.5$ AP; (ii) reaches state-of-the-art on COCO test-dev with $65.1$ AP and on DOTA with $82.62$ $\mathrm{AP_{50}}$; (iii) outperforms single models consistently on recent detection tasks such as Open Vocabulary Object Detection.

Results

TaskDatasetMetricValueModel
Object DetectionCOCO test-devbox mAP65.1MoCaE
3DCOCO test-devbox mAP65.1MoCaE
2D ClassificationCOCO test-devbox mAP65.1MoCaE
2D Object DetectionCOCO test-devbox mAP65.1MoCaE
16kCOCO test-devbox mAP65.1MoCaE

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