Adaptive Region Pooling for Object Detection Supplementary Material
نویسندگان
چکیده
Figure 3 illustrates detection results. Our algorithm is able to detect objects under different scales, lighting conditions, or partial occlusions. Some failure cases are also shown in Figure 4, where most of them are caused by heavy occlusions or objects with similar appearance. Moreover, we present the region proposal results that generate the bounding boxes. It shows that our SVR models are able to select high-quality region proposals.
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