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Unified Density-Aware Image Dehazing and Object Detection in Real-World Hazy Scenes

机译:统一的密度感知图像脱水和实际朦胧场景中的对象检测

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It is an important yet challenging task to detect objects on hazy images in real-world applications. The major challenge comes from low visual quality and large haze density variations. In this work, we aim to jointly solve the image dehazing and the object detection tasks in real hazy scenarios by using haze density as prior knowledge. Our proposed Unified Dehazing and Detection (UDnD) framework consists of three parts: a residual-aware haze density classifier, a density-aware dehazing network, and a density-aware object detector. First, the classifier exploits the residuals of hazy images to accurately predict density levels, which provide rich domain knowledge for the subsequent two tasks. Then, we design respectively a High-Resolution Dehazing Network (HRDN) and a Faster R-CNN-based multi-domain object detector to leverage the extracted density information and tackle hazy object detection. Experiments demonstrate that UDnD performs favorably against other methods for object detection in real-world hazy scenes. Also, HRDN achieves better results than state-of-the-art dehazing methods in terms of PSNR and SSIM. Hence, HRDN can conduct haze removal effectively, based on which UDnD is able to provide high-quality detection results.
机译:在真实世界应用中检测朦胧图像上的对象是一个重要的且挑战性的任务。主要挑战来自低视觉质量和大的阴霾密度变化。在这项工作中,我们的目标是通过使用Haze密度作为先验知识共同解决真实朦胧场景中的图像脱皮和对象检测任务。我们提出的统一脱水和检测(UDND)框架由三个部分组成:残差感知密度分类器,密度感知脱水网络和密度感知对象检测器。首先,分类器利用朦胧图像的残差来准确地预测密度水平,为后续两个任务提供丰富的域知识。然后,我们分别设计了高分辨率的脱水网络(HRDN)和更快的基于R-CNN的多域对象检测器,以利用提取的密度信息和解决朦胧对象检测。实验表明,UDND对现实世界朦胧场景中的其他物体检测方法有利地表现出有利的。此外,HRDN在PSNR和SSIM方面比最先进的去吸收方法实现了更好的结果。因此,HRDN可以有效地进行雾度去除,基于哪个UDND能够提供高质量的检测结果。

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