Dual-Pass Feature-Fused SSD Model for Detecting Multi-Scale Vehicles on the Construction Site

Q4 Computer Science
M. Petrov, S. Zimina, D. Dyachenko, A. Dubodelov, S. Simakov
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引用次数: 0

Abstract

When detecting equipment on a construction site the objects of detection could have very different scale relative to the image on which they are located. For better detection and bounding box visualization of small objects, a Feature-Fused modification of the SSD detector can be used. Together with the use of overlapping image slicing on the inference, this model copes well with the detection of small objects. However, excessive manual adjustment of the slicing parameters for better detection of small objects can both generally worsen detection on scenes different from those on which the model was adjusted, and lead to significant losses in the detection of large objects and problems with their bound-ing box visualization. Therefore, to achieve the best quality, the image slicing parameters should be automatically selected by the model depending on the characteristic scales of objects in the image. The article presents a dual-pass version of Feature-Fused SSD for automatic determination of image slicing parameters. To determine the characteristic sizes of detected objects on the first pass, a fast truncated version of the detector is used. On the second pass the final object detection is carried out with slicing parameters selected after the first one. Depending on the complexity of the task being solved, the detector demonstrates a quality of 0.82 - 0.92 according to the mAP (mean Average Precision) metric.
用于检测建筑工地上多尺度车辆的双通道特征融合 SSD 模型
在检测建筑工地上的设备时,检测对象相对于其所在图像的比例可能非常不同。为了更好地检测小型物体并使其边界框可视化,可以使用 SSD 检测器的特征融合模型。该模型与推理中使用的重叠图像切片一起,可以很好地应对小型物体的检测。但是,如果为了更好地检测小物体而过多地手动调整切片参数,则会导致在与模型调整对象不同的场景中检测效果普遍变差,同时也会导致在检测大物体时出现重大损失,并出现边界框可视化问题。因此,为了达到最佳质量,图像切片参数应由模型根据图像中物体的特征尺度自动选择。 本文介绍了自动确定图像切片参数的特征融合 SSD 双通道版本。为了在第一次检测中确定检测物体的特征尺寸,使用了快速截断检测器版本。在第二次检测中,使用第一次检测后选择的切片参数进行最终的物体检测。根据所解决任务的复杂程度,检测器的 mAP(平均精度)指标显示质量为 0.82 - 0.92。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Scientific Visualization
Scientific Visualization Computer Science-Computer Vision and Pattern Recognition
CiteScore
1.30
自引率
0.00%
发文量
20
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