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Most Influential ICCV 2017 Paper · 2026-03 edition

Focal Loss For Dense Object Detection

Tsung-Yi Lin; Priya Goyal; Ross Girshick; Kaiming He; Piotr Dollar

Venue
International Conference on Computer Vision (ICCV) 2017
Recognition
Most Influential ICCV 2017 Paper (Rank No. 2)
Edition
2026-03
Impact factor
10
Certificate ID
c675571933b36943

Abstract

The highest accuracy object detectors to date are based on a two-stage approach popularized by R-CNN, where a classifier is applied to a sparse set of candidate object locations. In contrast, one-stage detectors that are applied over a regular, dense sampling of possible object locations have the potential to be faster and simpler, but have trailed the accuracy of two-stage detectors thus far. In this paper, we investigate why this is the case. We discover that the extreme foreground-background class imbalance encountered during training of dense detectors is the central cause. We propose to address this class imbalance by reshaping the standard cross entropy loss such that it down-weights the loss assigned to well-classified examples. Our novel Focal Loss focuses training on a sparse set of hard examples and prevents the vast number of easy negatives from overwhelming the detector during training. To evaluate the effectiveness of our loss, we design and train a simple dense detector we call RetinaNet. Our results show that when trained with the focal loss, RetinaNet is able to match the speed of previous one-stage detectors while surpassing the accuracy of all existing state-of-the-art two-stage detectors.

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