multiple classifier
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2022 ◽  
pp. 201-209
Author(s):  
Umesh Anandrao Patil ◽  
Sanjeev J. Wagh

The medical industry has advanced in a manner where high end technologies are used for early detection and analysis of diseases that are hard to encounter with normal procedures of the medical field. One such disease is diabetic retinopathy (DR) further classified as non-proliferative diabetic retinopathy (NPDR) and proliferative diabetic retinopathy (PDR) conditions. Early detection of NPDR is a challenging task, and it requires examination of fundus images in an amplified manner. To overcome these early detection of DR, the authors propose an automated system that will be using machine learning classifier techniques with combination of convolutional neural network (CNN) to self-train the system and detect the early stages of retinal scans by feature extraction and use of existing retinal scan databases. Hence, the system will eliminate the human flaw of inability to detect early DR in diagnosis and will help us treat the patient in early stages.


2021 ◽  
Vol 7 (2) ◽  
pp. 232-257
Author(s):  
Alexandra Y. Aikhenvald

Abstract Noun categorization devices, or classifiers, of all types are a means of classifying referents in terms of basic cognitively salient parameters. These include humanness, animacy, sex, shape, direction and orientation, consistency, and function. In large systems of classifiers, one finds additional terms whose application is restricted to a limited set of referents, or even just to a single referent. For instance, numerous languages of Mainland Southeast Asia have elaborate sets of specific classifiers in the domain of social hierarchies and human interactions. Languages with multiple classifier systems spoken in riverine environment will be likely to have a special classifier for ‘canoe’. Rather than categorizing entities in terms of general features, such classifiers with specific meanings serve to highlight items important for the socio-cultural environment of the speakers and their means of subsistence. Specific classifiers are likely to be lost if a practice or a hierarchy they reflect undergoes attrition. They occupy a singular place in language acquisition and the history of development of classifier systems.


2021 ◽  
Author(s):  
Lamia Fatma Houbaba Chaouche Ramdane ◽  
Habib Mahi ◽  
Mostafa El Habib Daho ◽  
Mohammed El Amine Lazouni

Author(s):  
PEREPI RAJARAJESWARI ◽  
O. ANWAR BÉG

This paper describes a novel call recognizer system based on the machine learning approach. Current trends, intelligence, emotional recognition and other factors are important challenges in the real world. The proposed system provides robustness with high accuracy and adequate response time for the human–computer interaction. Intelligence and emotion recognition from the speech of human–computer interfaces are simulated via multiple classifier systems (MCSs). At a higher-level stage, the acoustic stream phase extracts certain acoustic features based on the pitch and energy of the signal. Here, the feature space is labeled with various emotional types in the training phase. Emotional categories are trained in the acoustic feature space. The semantic stream process converts speech into text in the input speech signal. Text classification algorithms are applied subsequently. The clustering and classification process is performed via a [Formula: see text]-means algorithm. The detection of the Tone of Voice of call recognition system is achieved with the XGBoost model for feature extraction and detection of a particular phrase in the client call phase. Speech expressions are used for understanding the human emotion. The algorithms are tested and demonstrate good performance in the simulation environment.


2021 ◽  
Vol 13 (15) ◽  
pp. 3019
Author(s):  
Antonio T. Monteiro ◽  
Cláudia Carvalho-Santos ◽  
Richard Lucas ◽  
Jorge Rocha ◽  
Nuno Costa ◽  
...  

Conservation and policy agendas, such as the European Biodiversity strategy, Aichi biodiversity (target 5) and Common Agriculture Policy (CAP), are overlooking the progress made in mountain grassland cover conservation by 2020, which has significant socio-ecological implications to Europe. However, because the existing data near 2020 is scarce, the shifting character of mountain grasslands remains poorly characterized, and even less is known about the conservation outcomes because of different governance regimes and map uncertainty. Our study used Landsat satellite imagery over a transboundary mountain region in the northwestern Iberian Peninsula (Peneda-Gerês) to shed light on these aspects. Supervised classifications with a multiple classifier ensemble approach (MCE) were performed, with post classification comparison of maps established and bias-corrected to identify the trajectory in grassland cover, including protected and unprotected governance regimes. By analysing class-allocation (Shannon entropy), creating 95% confidence intervals for the area estimates, and evaluating the class-allocation thematic accuracy relationship, we characterized uncertainty in the findings. The bias-corrected estimates suggest that the positive progress claimed internationally by 2020 was not achieved. Our null hypothesis to declare a positive progress (at least equality in the proportion of grassland cover of 2019 and 2002) was rejected (X2 = 1972.1, df = 1, p < 0.001). The majority of grassland cover remained stable (67.1 ± 10.1 relative to 2002), but loss (−32.8 ± 7.1% relative to 2002 grasslands cover) overcame gain areas (+11.4 ± 6.6%), indicating net loss as the prevailing pattern over the transboundary study area (−21.4%). This feature prevailed at all extents of analysis (lowlands, −22.9%; mountains, −17.9%; mountains protected, −14.4%; mountains unprotected, −19.7%). The results also evidenced that mountain protected governance regimes experienced a lower decline in grassland extent compared to unprotected. Shannon entropy values were also significantly lower in correctly classified validation sites (z = −5.69, p = 0.0001, n = 708) suggesting a relationship between the quality of pixel assignment and thematic accuracy. We therefore encourage a post-2020 conservation and policy action to safeguard mountain grasslands by enhancing the role of protected governance regimes. To reduce uncertainty, grassland gain mapping requires additional remote sensing research to find the most adequate spatial and temporal data resolution to retrieve this process.


2021 ◽  
Vol 7 ◽  
pp. e493
Author(s):  
Omneya Attallah ◽  
Fatma Anwar ◽  
Nagia M. Ghanem ◽  
Mohamed A. Ismail

Breast cancer (BC) is one of the most common types of cancer that affects females worldwide. It may lead to irreversible complications and even death due to late diagnosis and treatment. The pathological analysis is considered the gold standard for BC detection, but it is a challenging task. Automatic diagnosis of BC could reduce death rates, by creating a computer aided diagnosis (CADx) system capable of accurately identifying BC at an early stage and decreasing the time consumed by pathologists during examinations. This paper proposes a novel CADx system named Histo-CADx for the automatic diagnosis of BC. Most related studies were based on individual deep learning methods. Also, studies did not examine the influence of fusing features from multiple CNNs and handcrafted features. In addition, related studies did not investigate the best combination of fused features that influence the performance of the CADx. Therefore, Histo-CADx is based on two stages of fusion. The first fusion stage involves the investigation of the impact of fusing several deep learning (DL) techniques with handcrafted feature extraction methods using the auto-encoder DL method. This stage also examines and searches for a suitable set of fused features that could improve the performance of Histo-CADx. The second fusion stage constructs a multiple classifier system (MCS) for fusing outputs from three classifiers, to further improve the accuracy of the proposed Histo-CADx. The performance of Histo-CADx is evaluated using two public datasets; specifically, the BreakHis and the ICIAR 2018 datasets. The results from the analysis of both datasets verified that the two fusion stages of Histo-CADx successfully improved the accuracy of the CADx compared to CADx constructed with individual features. Furthermore, using the auto-encoder for the fusion process has reduced the computation cost of the system. Moreover, the results after the two fusion stages confirmed that Histo-CADx is reliable and has the capacity of classifying BC more accurately compared to other latest studies. Consequently, it can be used by pathologists to help them in the accurate diagnosis of BC. In addition, it can decrease the time and effort needed by medical experts during the examination.


Author(s):  
Mario Barbareschi ◽  
Salvatore Barone ◽  
Nicola Mazzocca

AbstractSo far, multiple classifier systems have been increasingly designed to take advantage of hardware features, such as high parallelism and computational power. Indeed, compared to software implementations, hardware accelerators guarantee higher throughput and lower latency. Although the combination of multiple classifiers leads to high classification accuracy, the required area overhead makes the design of a hardware accelerator unfeasible, hindering the adoption of commercial configurable devices. For this reason, in this paper, we exploit approximate computing design paradigm to trade hardware area overhead off for classification accuracy. In particular, starting from trained DT models and employing precision-scaling technique, we explore approximate decision tree variants by means of multiple objective optimization problem, demonstrating a significant performance improvement targeting field-programmable gate array devices.


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