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5.0 KiB

This model was published in HF papers on 2022-01-28 and contributed to Hugging Face Transformers on 2025-02-04.

DAB-DETR

Overview

The DAB-DETR model was proposed in DAB-DETR: Dynamic Anchor Boxes are Better Queries for DETR by Shilong Liu, Feng Li, Hao Zhang, Xiao Yang, Xianbiao Qi, Hang Su, Jun Zhu, Lei Zhang. DAB-DETR is an enhanced variant of Conditional DETR. It utilizes dynamically updated anchor boxes to provide both a reference query point (x, y) and a reference anchor size (w, h), improving cross-attention computation. This new approach achieves 45.7% AP when trained for 50 epochs with a single ResNet-50 model as the backbone.

drawing

The abstract from the paper is the following:

We present in this paper a novel query formulation using dynamic anchor boxes for DETR (DEtection TRansformer) and offer a deeper understanding of the role of queries in DETR. This new formulation directly uses box coordinates as queries in Transformer decoders and dynamically updates them layer-by-layer. Using box coordinates not only helps using explicit positional priors to improve the query-to-feature similarity and eliminate the slow training convergence issue in DETR, but also allows us to modulate the positional attention map using the box width and height information. Such a design makes it clear that queries in DETR can be implemented as performing soft ROI pooling layer-by-layer in a cascade manner. As a result, it leads to the best performance on MS-COCO benchmark among the DETR-like detection models under the same setting, e.g., AP 45.7% using ResNet50-DC5 as backbone trained in 50 epochs. We also conducted extensive experiments to confirm our analysis and verify the effectiveness of our methods.

This model was contributed by davidhajdu. The original code can be found here.

How to Get Started with the Model

Use the code below to get started with the model.

import requests
import torch
from PIL import Image

from transformers import AutoImageProcessor, AutoModelForObjectDetection


url = 'http://images.cocodataset.org/val2017/000000039769.jpg'
image = Image.open(requests.get(url, stream=True).raw)

image_processor = AutoImageProcessor.from_pretrained("IDEA-Research/dab-detr-resnet-50")
model = AutoModelForObjectDetection.from_pretrained("IDEA-Research/dab-detr-resnet-50", device_map="auto")

inputs = image_processor(images=image, return_tensors="pt").to(model.device)

with torch.no_grad():
    outputs = model(**inputs)

results = image_processor.post_process_object_detection(outputs, target_sizes=torch.tensor([image.size[::-1]]), threshold=0.3)

for result in results:
    for score, label_id, box in zip(result["scores"], result["labels"], result["boxes"]):
        score, label = score.item(), label_id.item()
        box = [round(i, 2) for i in box.tolist()]
        print(f"{model.config.id2label[label]}: {score:.2f} {box}")

This should output

cat: 0.87 [14.7, 49.39, 320.52, 469.28]
remote: 0.86 [41.08, 72.37, 173.39, 117.2]
cat: 0.86 [344.45, 19.43, 639.85, 367.86]
remote: 0.61 [334.27, 75.93, 367.92, 188.81]
couch: 0.59 [-0.04, 1.34, 639.9, 477.09]

There are three other ways to instantiate a DAB-DETR model (depending on what you prefer):

Option 1: Instantiate DAB-DETR with pre-trained weights for entire model

from transformers import DabDetrForObjectDetection


model = DabDetrForObjectDetection.from_pretrained("IDEA-Research/dab-detr-resnet-50", device_map="auto")

Option 2: Instantiate DAB-DETR with randomly initialized weights for Transformer, but pre-trained weights for backbone

from transformers import DabDetrConfig, DabDetrForObjectDetection


config = DabDetrConfig()
model = DabDetrForObjectDetection(config)

Option 3: Instantiate DAB-DETR with randomly initialized weights for backbone + Transformer

config = DabDetrConfig()
model = DabDetrForObjectDetection(config)

DabDetrConfig

autodoc DabDetrConfig

DabDetrModel

autodoc DabDetrModel - forward

DabDetrForObjectDetection

autodoc DabDetrForObjectDetection - forward