Abstract
High Resolution Classifier. All state-of-the-art detec-tion methods use classifier pre-trained on ImageNet [16]. Starting with AlexNet most classifiers operate on input im-ages smaller than 256 256 [8]. The original YOLO trains the classifier network at 224 224 and increases the reso-lution to 448 for detection. This means the network has to
High, Resolution, Rose, High resolution, Lution, Reso lution
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