| 5 | 1/1 | 返回列表 |
| 查看: 8603 | 回復(fù): 112 | |||||
| 【有獎交流】積極回復(fù)本帖子,參與交流,就有機會分得作者 sig102657 的 776 個金幣 ,回帖就立即獲得 2 個金幣,每人有 1 次機會 | |||||
| 當(dāng)前只顯示滿足指定條件的回帖,點擊這里查看本話題的所有回帖 | |||||
[交流]
Call for Papers (IEEE Transactions on Neural Networks and Learning Systems Speci
|
|||||
IEEE Transactions on Neural Networks and Learning Systems Call for Papers Special Issue on Effective Feature Fusion in Deep Neural Networks https://cis.ieee.org/images/file ... efdnn_tnnls_cfp.pdf Submission deadline: nov. 30, 2020. first notification: feb. 1, 2021 ================================================================================ Due to the powerful ability of learning hierarchical features, Deep Deural Detworks (DNNs) have achieved great success in many intelligent perception systems with image data and/or point cloud data and have been widely used in developing robust automotive driving, visual surveillance, and human-machine interaction. For example, state-of-the-art performances in image classification, object detection, semantic segmentation, and cross-modal perception are obtained by different kinds of DNNs. To a great degree, the success of DNNs stems from properly fusing the hierarchical features which are diverse in semantic-levels, resolutions/scales, roles, sensitivity, and so on. Representative fusion schemes include dense connection, residual learning, skip connection, top-down feature pyramid, and attention-based feature weighting. However, there is a large room for developing more effective feature fusion to improve the performance of dnns so that machine perception can approach or exceed human perception. This special issue focuses on investigating problems and phenomena of existing feature fusion schemes, tackling the challenges of semantic gap and perception of hard objects and scenarios, and providing new ideas, theories, solutions, and insights for effective feature fusion in DNNs for image and/or point cloud data. The topics of interest include, but are not limited to: n Feature fusion for effective backbones and prediction n Feature fusion for image/video data using deep neural networks n Feature fusion for point cloud data using deep neural networks n Adaptive feature fusion networks n Criteria and loss functions for feature fusion in deep neural networks n Feature fusion for detecting/recognizing small objects n Feature fusion for detecting/recognizing occluded objects n Attention-based feature fusion in deep neural networks n Visualization and interpretation of feature fusion n Feature fusion for semantic segmentation n Feature fusion for object tracking n Feature fusion for cross-modal/domain learning n Feature fusion for 3D object detection n New feature fusion problems and applications IMPORTANT DATAS n November 30, 2020: Deadline for manuscript submission n February 1, 2021: Reviewer’s comments to authors n April 1, 2021: Submission deadline of revisions n June 1, 2021: Final decisions to authors n July 1, 2021: Publication date (Early access) GUEST EDITORS Yanwei Pang, Tianjin University, China, pyw@tju.edu.cn Fahad Shahbaz Khan, Inception Institute of Artificial Intelligence, UAE, fahad.khan@liu.se Xin Lu, Adobe Inc., USA, xinl@adobe.com Fabio Cuzzolin, Oxford Brookes University, UK, fabio.cuzzolin@brookes.ac.uk SUBMISSION INSTRUCTIONS n Read the Information for Authors at https://cis.ieee.org/tnnls. n Submit your manuscript at the TNNLS webpage (https://mc.manuscriptcentral.com/tnnls) and follow the submission procedure. Please, clearly indicate on the first page of the manuscript and in the cover letter that the manuscript is submitted to this special issue. Send an email to the leading editor Prof. Yanwei Pang (pyw@tju.edu.cn) with subject “TNNLS special issue submission” to notify your submission. n Early submissions are welcome. We will start the review process as soon as we receive your contributions. |
» 搶金幣啦!回帖就可以得到:
+5/250
+1/84
+2/78
+5/60
+1/37
+1/34
+1/33
+1/22
+1/6
+1/5
+1/5
+1/5
+1/3
+1/2
+1/2
+1/2
+1/1
+1/1
+1/1
+1/1
|
本帖內(nèi)容被屏蔽 |
|
本帖內(nèi)容被屏蔽 |
|
本帖內(nèi)容被屏蔽 |
| 最具人氣熱帖推薦 [查看全部] | 作者 | 回/看 | 最后發(fā)表 | |
|---|---|---|---|---|
|
[考研] 271求調(diào)劑 +4 | 生如夏花… 2026-03-11 | 4/200 |
|
|---|---|---|---|---|
|
[考研] 307求調(diào)劑 +6 | 超級伊昂大王 2026-03-10 | 6/300 |
|
|
[考研] 化工0817調(diào)劑 +8 | 燦若星晨 2026-03-10 | 8/400 |
|
|
[考研] 調(diào)劑 +5 | 呵唔哦豁 2026-03-10 | 5/250 |
|
|
[考研] 086000生物與醫(yī)藥319分求調(diào)劑 +4 | Tolkien 2026-03-07 | 8/400 |
|
|
[考研] 材料與化工,291,求調(diào)劑 +12 | 咕嚕咕嚕123123 2026-03-05 | 13/650 |
|
|
[考研] 0817化學(xué)工程319求調(diào)劑 +7 | lv945 2026-03-08 | 9/450 |
|
|
[考研] 一志愿山東大學(xué),總分327,英語二79,有論文,有競賽,已過四六級 +3 | 木木目目1 2026-03-09 | 3/150 |
|
|
[考研] 一志愿南大化學(xué)339分求調(diào)劑,四六級已過,有比賽,有文章 +7 | Gallantzhou 2026-03-07 | 7/350 |
|
|
[考研] 材料調(diào)劑 +4 | xxxcm 2026-03-08 | 7/350 |
|
|
[考研] 293一志愿華東理工 0817化學(xué)工程與技術(shù) 調(diào)劑 +5 | fjj0912 2026-03-07 | 5/250 |
|
|
[考研] 材料科學(xué)(0805)338 求調(diào)劑 +7 | xiaokang3286 2026-03-07 | 7/350 |
|
|
[考研] 308求調(diào)劑 +7 | 倘若起風(fēng)了呢 2026-03-05 | 9/450 |
|
|
[考博] 2026年博士名額撿漏 +4 | 科研ya 2026-03-04 | 7/350 |
|
|
[考研] 08工科求調(diào)劑 +3 | 隆LLL 2026-03-06 | 4/200 |
|
|
[考研] 287求調(diào)劑 +3 | 看看我. 2026-03-05 | 6/300 |
|
|
[考研] 085600,一志愿鄭州大學(xué),280分求調(diào)劑 +7 | Wuqi725 2026-03-05 | 7/350 |
|
|
[考研] 334求調(diào)劑 +6 | Trying] 2026-03-05 | 8/400 |
|
|
[考研] 材料調(diào)劑 +4 | L9370 2026-03-05 | 4/200 |
|
|
[考研] 紡織、生物、化學(xué)、材料等專業(yè) +3 | Eember. 2026-03-05 | 7/350 |
|