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4 months ago

CNN Image Retrieval Learns from BoW: Unsupervised Fine-Tuning with Hard Examples

Filip Radenović; Giorgos Tolias; Ondřej Chum

CNN Image Retrieval Learns from BoW: Unsupervised Fine-Tuning with Hard Examples

Abstract

Convolutional Neural Networks (CNNs) achieve state-of-the-art performance in many computer vision tasks. However, this achievement is preceded by extreme manual annotation in order to perform either training from scratch or fine-tuning for the target task. In this work, we propose to fine-tune CNN for image retrieval from a large collection of unordered images in a fully automated manner. We employ state-of-the-art retrieval and Structure-from-Motion (SfM) methods to obtain 3D models, which are used to guide the selection of the training data for CNN fine-tuning. We show that both hard positive and hard negative examples enhance the final performance in particular object retrieval with compact codes.

Code Repositories

filipradenovic/cnnimageretrieval
pytorch
Mentioned in GitHub
raojay7/cnnimageretrieval-pytorch
pytorch
Mentioned in GitHub
RuibinMa/comp755project-ruibinma
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-retrieval-on-oxf105ksiaMAC+QE*
MAP: 77.9%
image-retrieval-on-oxf5ksiaMAC+QE*
MAP: 82.9%
image-retrieval-on-par106ksiaMAC+QE*
mAP: 78.3%
image-retrieval-on-par6ksiaMAC+QE*
mAP: 85.6%

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