Featurized Query R-CNN
This work addresses efficiency and generalization issues in object detection for computer vision applications, representing an incremental improvement over existing methods.
The paper tackles the computational burden and poor generalization of query-based object detection by introducing featurized object queries within the Faster R-CNN framework, achieving the best speed-accuracy trade-off on the COCO dataset among R-CNN detectors.
The query mechanism introduced in the DETR method is changing the paradigm of object detection and recently there are many query-based methods have obtained strong object detection performance. However, the current query-based detection pipelines suffer from the following two issues. Firstly, multi-stage decoders are required to optimize the randomly initialized object queries, incurring a large computation burden. Secondly, the queries are fixed after training, leading to unsatisfying generalization capability. To remedy the above issues, we present featurized object queries predicted by a query generation network in the well-established Faster R-CNN framework and develop a Featurized Query R-CNN. Extensive experiments on the COCO dataset show that our Featurized Query R-CNN obtains the best speed-accuracy trade-off among all R-CNN detectors, including the recent state-of-the-art Sparse R-CNN detector. The code is available at {https://github.com/hustvl/Featurized-QueryRCNN.