Slicing Aided Hyper Inference and Fine-Tuning for Small Object Detection

F. C. Akyon, S. Altinuc, A. Temi̇zel
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引用次数: 60

Abstract

Detection of small objects and objects far away in the scene is a major challenge in surveillance applications. Such objects are represented by small number of pixels in the image and lack sufficient details, making them difficult to detect using conventional detectors. In this work, an open-source framework called Slicing Aided Hyper Inference (SAHI) is proposed that provides a generic slicing aided inference and fine-tuning pipeline for small object detection. The proposed technique is generic in the sense that it can be applied on top of any available object detector without any fine-tuning. Experimental evaluations, using object detection baselines on the Visdrone and xView aerial object detection datasets show that the proposed inference method can increase object detection AP by 6.8%, 5.1% and 5.3% for FCOS, VFNet and TOOD detectors, respectively. Moreover, the detection accuracy can be further increased with a slicing aided fine-tuning, resulting in a cumulative increase of 12.7%, 13.4% and 14.5% AP in the same order. Proposed technique has been integrated with Detectron2, MMDetection and YOLOv5 models and it is publicly available at https://github.com/obss/sahi.git
小目标检测的切片辅助超推理和微调
在监控应用中,小物体和远处物体的检测是一个主要挑战。这些物体在图像中由少量像素表示,并且缺乏足够的细节,使得使用传统探测器很难检测到它们。在这项工作中,提出了一个称为切片辅助超推理(SAHI)的开源框架,该框架为小目标检测提供了通用的切片辅助推理和微调管道。所提出的技术是通用的,因为它可以应用于任何可用的对象检测器之上,而无需任何微调。在Visdrone和xView航空目标检测数据集上使用目标检测基线进行的实验评估表明,该推理方法对FCOS、VFNet和TOOD探测器的目标检测AP分别提高了6.8%、5.1%和5.3%。此外,通过切片辅助微调可以进一步提高检测精度,在相同的顺序下,累积增加了12.7%,13.4%和14.5%的AP。该技术已与Detectron2、MMDetection和YOLOv5模型集成,并可在https://github.com/obss/sahi.git上公开获取
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