Correlation Loss: Enforcing Correlation between Classification and Localization

01/03/2023
by   Fehmi Kahraman, et al.
0

Object detectors are conventionally trained by a weighted sum of classification and localization losses. Recent studies (e.g., predicting IoU with an auxiliary head, Generalized Focal Loss, Rank Sort Loss) have shown that forcing these two loss terms to interact with each other in non-conventional ways creates a useful inductive bias and improves performance. Inspired by these works, we focus on the correlation between classification and localization and make two main contributions: (i) We provide an analysis about the effects of correlation between classification and localization tasks in object detectors. We identify why correlation affects the performance of various NMS-based and NMS-free detectors, and we devise measures to evaluate the effect of correlation and use them to analyze common detectors. (ii) Motivated by our observations, e.g., that NMS-free detectors can also benefit from correlation, we propose Correlation Loss, a novel plug-in loss function that improves the performance of various object detectors by directly optimizing correlation coefficients: E.g., Correlation Loss on Sparse R-CNN, an NMS-free method, yields 1.6 AP gain on COCO and 1.8 AP gain on Cityscapes dataset. Our best model on Sparse R-CNN reaches 51.0 AP without test-time augmentation on COCO test-dev, reaching state-of-the-art. Code is available at https://github.com/fehmikahraman/CorrLoss

READ FULL TEXT
research
09/28/2020

A Ranking-based, Balanced Loss Function Unifying Classification and Localisation in Object Detection

We propose average Localization-Recall-Precision (aLRP), a unified, boun...
research
08/31/2020

VarifocalNet: An IoU-aware Dense Object Detector

Accurately ranking a huge number of candidate detections is a key to the...
research
12/03/2021

A Systematic IoU-Related Method: Beyond Simplified Regression for Better Localization

Four-variable-independent-regression localization losses, such as Smooth...
research
08/17/2020

AP-Loss for Accurate One-Stage Object Detection

One-stage object detectors are trained by optimizing classification-loss...
research
12/09/2021

Searching Parameterized AP Loss for Object Detection

Loss functions play an important role in training deep-network-based obj...
research
07/24/2021

Rank Sort Loss for Object Detection and Instance Segmentation

We propose Rank Sort (RS) Loss, as a ranking-based loss function to ...
research
07/21/2023

Enhancing Your Trained DETRs with Box Refinement

We present a conceptually simple, efficient, and general framework for l...

Please sign up or login with your details

Forgot password? Click here to reset