DetCLIPv3: Towards Versatile Generative Open-vocabulary Object Detection
Lewei Yao, Renjie Pi, Jianhua Han, Xiaodan Liang, Hang Xu, Wei Zhang,, Zhenguo Li, Dan Xu

TL;DR
DetCLIPv3 is a versatile open-vocabulary object detector that also generates hierarchical labels, leveraging a robust architecture, rich training data, and efficient strategies to outperform existing models in detection and captioning tasks.
Contribution
The paper introduces DetCLIPv3, a novel model combining open-vocabulary detection with hierarchical caption generation, enhanced by auto-annotation and a two-stage training process.
Findings
Achieves 47.0 zero-shot AP on LVIS benchmark.
Outperforms previous models like GLIPv2 and GroundingDINO in detection.
Sets new state-of-the-art in dense captioning with 19.7 AP on VG dataset.
Abstract
Existing open-vocabulary object detectors typically require a predefined set of categories from users, significantly confining their application scenarios. In this paper, we introduce DetCLIPv3, a high-performing detector that excels not only at both open-vocabulary object detection, but also generating hierarchical labels for detected objects. DetCLIPv3 is characterized by three core designs: 1. Versatile model architecture: we derive a robust open-set detection framework which is further empowered with generation ability via the integration of a caption head. 2. High information density data: we develop an auto-annotation pipeline leveraging visual large language model to refine captions for large-scale image-text pairs, providing rich, multi-granular object labels to enhance the training. 3. Efficient training strategy: we employ a pre-training stage with low-resolution inputs that…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Advanced Image and Video Retrieval Techniques · Advanced Neural Network Applications
MethodsSparse Evolutionary Training
