2020
DOI: 10.3390/sym12111928
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Automated Sustainable Multi-Object Segmentation and Recognition via Modified Sampling Consensus and Kernel Sliding Perceptron

Abstract: Object recognition in depth images is challenging and persistent task in machine vision, robotics, and automation of sustainability. Object recognition tasks are a challenging part of various multimedia technologies for video surveillance, human–computer interaction, robotic navigation, drone targeting, tourist guidance, and medical diagnostics. However, the symmetry that exists in real-world objects plays a significant role in perception and recognition of objects in both humans and machines. With advances in… Show more

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Cited by 49 publications
(15 citation statements)
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“…The separation of the fingers is represented as open, closed, crossed, and semi-open. By these notations, the set of features is optimized, helping to reduce the overall computational time and complexity [60][61][62][63]. Figure 8 shows the result of the fuzzy logic optimization.…”
Section: Feature Foptimization Using Fuzzy Logicmentioning
confidence: 99%
“…The separation of the fingers is represented as open, closed, crossed, and semi-open. By these notations, the set of features is optimized, helping to reduce the overall computational time and complexity [60][61][62][63]. Figure 8 shows the result of the fuzzy logic optimization.…”
Section: Feature Foptimization Using Fuzzy Logicmentioning
confidence: 99%
“…This paper proposes three features for IMU signals: 1D-LBP, state-space correlation entropy (SSCE), and dispersion entropy (DE), which is explained in the sections below. Algorithm 2 ( 1 SSCE and 2 Dispersion Entropy [42][43][44]) in the supplementary materials section shows the pseudocode for the overall IMU feature extraction. [45] technique.…”
Section: Imu-based Hybrid Feature Extractionmentioning
confidence: 99%
“…Activity recognition by digital monitoring systems is useful in many daily life applications such as video indexing and retrieval, virtual worlds and surveillance systems installed in houses, hospitals and public areas [12][13][14]. An automatic, efficient and robust surveillance system is imperative because of the elevated crime rates all over the world [15,16].…”
Section: Introductionmentioning
confidence: 99%