Improvement of Detection Rate for Small Objects Using Pre-processing Network

Doohee Lee, Gi Soon Cha, Ehtesham Iqbal, H. Song, Kwang-nam Choi
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Abstract

Artificial intelligence (AI) has been developing in a variety of methods over the past decade. However most AI experts worried to build a deep or wide network because the accuracy of AI models depends heavily on the depth of the network. In general deep and wide networks are better at learning than those that are less deep and wide and wide. On the other hand deeper networks are more complex and have many disadvantages such as computational cost and system specification dependency. We propose a novel method to improve the average recall rate for small objects in the deep convolutional network in the paper. The proposed method added pre-processing layer before the network rather than stacking the networks deeper or wide. The presented pre-processing layer consists of two major parts: up-sampling and down-sampling of the data. The overall objective of up-sampling and down-sampling is to enhance the resolution of small objects in the input image. The pre-processing network improves the average recall rate of the base network to 3.56%. This experiment result depicts that the proposed method outperforms the small object detection performance. CCS CONCEPTS • Computing methodologies • Object detection
利用预处理网络提高小目标的检测率
人工智能(AI)在过去十年中以各种方式发展。然而,大多数人工智能专家担心建立一个深度或广泛的网络,因为人工智能模型的准确性在很大程度上取决于网络的深度。一般来说,深度和广度的网络比深度和广度不够的网络更擅长学习。另一方面,深度网络更加复杂,并且存在计算成本和系统规格依赖性等缺点。本文提出了一种提高深度卷积网络中小目标平均召回率的新方法。该方法在网络前增加预处理层,而不是将网络堆叠得更深或更宽。本文提出的预处理层包括数据的上采样和下采样两大部分。上采样和下采样的总体目标是提高输入图像中小目标的分辨率。预处理网络将基础网络的平均召回率提高到3.56%。实验结果表明,该方法具有较好的小目标检测性能。CCS概念•计算方法•对象检测
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