目标检测论文阅读:Cascade R-CNN: Delving into High Quality Object Detection
2019-03-18 14:49
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总共有三个roi-wise subnet相cascade (级联) ,每个roi-wise subnet采用不同的IoU阈值。依次为0.5、0.6、0.7
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