首页> 中文期刊> 《人工智能杂志(英文)》 >A Review of Object Detectors in Deep Learning

A Review of Object Detectors in Deep Learning

         

摘要

Object detection is one of the most fundamental,longstanding and significant problems in the field of computer vision,where detection involves object classification and location.Compared with the traditional object detection algorithms,deep learning makes full use of its powerful feature learning capabilities showing better detection performance.Meanwhile,the emergence of large datasets and tremendous improvement in computer computing power have also contributed to the vigorous development of this field.In the paper,many aspects of generic object detection are introduced and summarized such as traditional object detection algorithms,datasets,evaluation metrics,detection frameworks based on deep learning and state-of-the-art detection results for object detectors.Finally,we discuss several promising directions for future research.

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