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IEICE Transactions in Information and Systems - 巻 103 / 号 7

タイトル
著者 ページ PKV
A Multilayer Steganography Method with High Embedding Efficiency for Palette Images
Han-Yan WU, Ling-Hwei CHEN, Yu-Tai CHING 103 7 1608–1617 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Trojan-Net Classification for Gate-Level Hardware Design Utilizing Boundary Net Structures
Kento HASEGAWA, Masao YANAGISAWA, Nozomu TOGAWA 103 7 1618–1622 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
A Series of PIN/Password Input Methods Resilient to Shoulder Hacking Based on Cognitive Difficulty of Tracing Multiple Key Movements
Kokoro KOBAYASHI, Tsuyoshi OGUNI, Masaki NAKAGAWA 103 7 1623–1632 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Logging Inter-Thread Data Dependencies in Linux Kernel
Takafumi KUBOTA, Naohiro AOTA, Kenji KONO 103 7 1633–1646 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
A Server-Based Distributed Storage Using Secret Sharing with AES-256 for Lightweight Safety Restoration
Sanghun CHOI, Shuichiro HARUTA, Yichen AN, Iwao SASASE 103 7 1647–1659 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Instruction Filters for Mitigating Attacks on Instruction Emulation in Hypervisors
Kenta ISHIGURO, Kenji KONO 103 7 1660–1671 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Byzantine-Tolerant Gathering of Mobile Agents in Asynchronous Arbitrary Networks with Authenticated Whiteboards
Masashi TSUCHIDA, Fukuhito OOSHITA, Michiko INOUE 103 7 1672–1682 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Sparsity Reduction Technique Using Grouping Method for Matrix Factorization in Differentially Private Recommendation Systems
Taewhan KIM, Kangsoo JUNG, Seog PARK 103 7 1683–1692 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Stochastic Discrete First-Order Algorithm for Feature Subset Selection
Kota KUDO, Yuichi TAKANO, Ryo NOMURA 103 7 1693–1702 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)
Strategy for Improving Target Selection Accuracy in Indirect Touch Input
Yizhong XIN, Ruonan LIU, Yan LI 103 7 1703–1709 2020 0.0
平均評価: 0.0 / 5 (0 件のレビュー)