Iterative Manifold Embedding Layer Learned by Incomplete Data for Large-scale Image Retrieval

14 Jul 2017  ยท  Jian Xu, Chunheng Wang, Chengzuo Qi, Cunzhao Shi, Baihua Xiao ยท

Existing manifold learning methods are not appropriate for image retrieval task, because most of them are unable to process query image and they have much additional computational cost especially for large scale database. Therefore, we propose the iterative manifold embedding (IME) layer, of which the weights are learned off-line by unsupervised strategy, to explore the intrinsic manifolds by incomplete data. On the large scale database that contains 27000 images, IME layer is more than 120 times faster than other manifold learning methods to embed the original representations at query time. We embed the original descriptors of database images which lie on manifold in a high dimensional space into manifold-based representations iteratively to generate the IME representations in off-line learning stage. According to the original descriptors and the IME representations of database images, we estimate the weights of IME layer by ridge regression. In on-line retrieval stage, we employ the IME layer to map the original representation of query image with ignorable time cost (2 milliseconds). We experiment on five public standard datasets for image retrieval. The proposed IME layer significantly outperforms related dimension reduction methods and manifold learning methods. Without post-processing, Our IME layer achieves a boost in performance of state-of-the-art image retrieval methods with post-processing on most datasets, and needs less computational cost.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Retrieval INSTRE IME layer MAP 82.4 # 1
Image Retrieval Oxf105k SIFT+IME layer MAP 31.3% # 9
Image Retrieval Oxf105k CNN+IME layer MAP 87.2% # 4
Image Retrieval Oxf5k IME MAP 83.5% # 6
Image Retrieval Oxf5k LLE [33] MAP 51.7% # 11
Image Retrieval Oxf5k IsoMap [32] MAP 77.9% # 9
Image Retrieval Oxf5k PCA [51] MAP 82.6% # 8
Image Retrieval Oxf5k CNN+IME layer MAP 92% # 2
Image Retrieval Oxf5k SIFT+IME layer MAP 62.2% # 10
Image Retrieval Paris6k IME layer mAP 96.6 # 1

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