2022
DOI: 10.1016/j.jvcir.2022.103505
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An efficient real-time target tracking algorithm using adaptive feature fusion

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Cited by 6 publications
(4 citation statements)
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“…Precision calculations: Precision was a measure of precision that represented the proportion of the example that was actually positive in the example that was divided into positive cases, which was calculated by [2]:…”
Section: Backbonementioning
confidence: 99%
See 1 more Smart Citation
“…Precision calculations: Precision was a measure of precision that represented the proportion of the example that was actually positive in the example that was divided into positive cases, which was calculated by [2]:…”
Section: Backbonementioning
confidence: 99%
“…As one of the key research areas in artificial intelligence and computer vision, target detection [1] was the cornerstone for solving higher‐level tasks such as image segmentation [1], target tracking [2] and event detection [3]. Nowadays, small target detection [4] still was one of the difficult problems in target detection.…”
Section: Introductionmentioning
confidence: 99%
“…Vision Image BEiT v1 [16], v2 [27], MAE [19], SimMIM [28], ADIOS [29], AMT [30], AttMask [31], Beyond-Masking [32], BootMAE [33], CAE [20], CAN [34], ConvMAE [21], Contrastive MAE [22], ContrastMask [35], dBOT [36], DMAE [37], Denoising MAE [38], GreenMAE [23], iBOT [39], LoMaR [40], LS-MAE [41], MaskAlign [42], MaskDistill [18], MaskFeat [43], MaskTune [44], MetaMask [45], MFM [46], MILAN [47], MixMask [48], MixMIM [24], MRA [49], MSN [50], MST [51], MultiMAE [52], MVP [53], RC-MAE [54], SDMAE [55], SemMAE [56], SdAE [57], SupMAE [58], U-MAE [59], UM-MAE [60] Video AdaMAE [61], Bevt [62], MAM2 [63], MAR [64], MaskViT [65], M3Video [66], MCVD…”
Section: Domain Sub-domain Research Papersmentioning
confidence: 99%
“…The most famous one is Masked Autoencoder (MAE) [19], which owns a very simple learning architecture but has been proven to be a strong and scalable pre-training framework for visual representation learning. MAE has attracted unprecedented attention and got various derivatives (e.g., CAE [20], ConvMAE [21], CMAE [22], GreenMAE [23], MixMIM [24]). To authors' knowledge, no research has ever explored MAE pretrained backbones for scene classification.…”
Section: Introductionmentioning
confidence: 99%