scholarly journals A Neurally Inspired Model of Figure Ground Organization with Local and Global Cues

AI ◽  
2020 ◽  
Vol 1 (4) ◽  
pp. 436-464
Author(s):  
Sudarshan Ramenahalli

Figure Ground Organization (FGO)-inferring spatial depth ordering of objects in a visual scene-involves determining which side of an occlusion boundary is figure (closer to the observer) and which is ground (further away from the observer). A combination of global cues, like convexity, and local cues, like T-junctions are involved in this process. A biologically motivated, feed forward computational model of FGO incorporating convexity, surroundedness, parallelism as global cues and spectral anisotropy (SA), T-junctions as local cues is presented. While SA is computed in a biologically plausible manner, the inclusion of T-Junctions is biologically motivated. The model consists of three independent feature channels, Color, Intensity and Orientation, but SA and T-Junctions are introduced only in the Orientation channel as these properties are specific to that feature of objects. The effect of adding each local cue independently and both of them simultaneously to the model with no local cues is studied. Model performance is evaluated based on figure-ground classification accuracy (FGCA) at every border location using the BSDS 300 figure-ground dataset. Each local cue, when added alone, gives statistically significant improvement in the FGCA of the model suggesting its usefulness as an independent FGO cue. The model with both local cues achieves higher FGCA than the models with individual cues, indicating SA and T-Junctions are not mutually contradictory. Compared to the model with no local cues, the feed-forward model with both local cues achieves ≥8.78% improvement in terms of FGCA.

2010 ◽  
Vol 84 (5) ◽  
pp. 254-259
Author(s):  
Egbert Van Der Meer

Het proces van risicomanagement wordt in dit artikel vergeleken met een elementair model uit de cybernetica, het feed-forward model. De onderdelen uit dit model worden elk van een betekenis voorzien in de context van risicomanagement en vervolgens op relevantie getoetst aan de hand van drie praktijkmodellen (COSO ERM , 2004, AS/NZS 4360, 2004 en Airmic RM S, 2002). Op basis hiervan wordt het model uitgebreid met learning en met enige voorzichtigheid geconcludeerd dat het learning feed-forward model een meer volledige beschrijving geeft van de hoofdlijnen van het risicomanagementproces dan de praktijkmodellen. Aanbevolen wordt dat organisaties het model gebruiken als startpunt voor het ontwerpen van een passend risicomanagementproces. In dit proces dienen ‘corporate governance’ en risicomanagement meer als één geheel te worden beschouwd en dient naast bestaande onderwerpen aandacht te worden besteed aan de mogelijkheid dat risico-informatie onduidelijk wordt gepresenteerd, verborgen blijft, niet wordt begrepen of wordt genegeerd (noise), en aan de referentiekaders van waaruit managers beslissingen nemen (reference). Ook wordt aangeraden om het risicomanagementproces pas uit te voeren bij nieuwe of gewijzigde risico’s en monitoring vooral uit te voeren vlak na invoering van een nieuw risicomanagementsysteem.


2021 ◽  
Author(s):  
Pengcheng Jiang

<i>Abstract</i>— One of the most prevalent diseases, skin cancer, has been proven to be treatable at an early stage. Thus, techniques that allow individuals to identify skin cancer symptoms early are in great demand. This paper proposed an interactive skin lesion diagnosis system based on the ensemble of multiple sophisticated CNN models for image classification. The performance of ResNet50, ResNeXt50, ResNeXt101, EfficientNetB4, Mobile-NetV2, MobileNetV3, and MnasNet are investigated separately as ensemble components. Then, using various criteria, we constructed ensembles and compared the accuracy they achieved. Moreover, we designed a method to update the ensemble for new data and examined its performance. In addition, a few natural language processing (NLP) techniques were used to make our system more user-friendly. To integrate all the functionalities, we built a user interface with PyQt5. As a result, MobileNetV3 achieved 91.02% as the best accuracy among all single models; ensemble weighted by cubic precision achieved 92.84% accuracy as the highest one in this study; a notable improvement in accuracy demonstrated the effectiveness of the model updating approach, and a system with all of the desired features was successfully developed. These findings benefit in two aspects. For model performance, applying cubic precisions can increase ensemble learning classification accuracy. For the developed diagnosis system, it can aid in the


2021 ◽  
Author(s):  
Anthony Joseph Leonardi

Fas expression is quickly upregulated on CD8+ T cells following stimulation, while FasL expression is limited to Tcm and later. A phenomenon of T cell differentiation via paracrine Fas signal has been previously described. Here, we describe such differentiation in a pool fits the Feed-forward model which can correct for disturbances in the system, as seen during in vitro T cell stimulation. This feed-forward controller exerts control via Fas/ FasL expression, and the effect is uncoupled with use of lz-FasL. Interestingly, the feed-forward model provides us with evolutionary insight as to why Fas stimulation becomes apoptotic at terminal differentiation, in order to exhibit a perfect and extinguished control and response.


2008 ◽  
Vol 31 (1) ◽  
pp. 25-26
Author(s):  
Linda Furey ◽  
Julian Paul Keenan

AbstractDifferentiating self from other has been investigated at the neural level, and its incorporation into the model proposed Hurley is necessary for the model to be complete. With an emphasis on the feed-forward model in layer 2, we examine the role that self and other disruptions, including auditory verbal hallucinations (AVHs), may have in expanding the model proposed by Hurley.


Author(s):  
Jonathan Readshaw ◽  
Stefano Giani

AbstractThis work presents a convolutional neural network for the prediction of next-day stock fluctuations using company-specific news headlines. Experiments to evaluate model performance using various configurations of word embeddings and convolutional filter widths are reported. The total number of convolutional filters used is far fewer than is common, reducing the dimensionality of the task without loss of accuracy. Furthermore, multiple hidden layers with decreasing dimensionality are employed. A classification accuracy of 61.7% is achieved using pre-learned embeddings, that are fine-tuned during training to represent the specific context of this task. Multiple filter widths are also implemented to detect different length phrases that are key for classification. Trading simulations are conducted using the presented classification results. Initial investments are more than tripled over an 838-day testing period using the optimal classification configuration and a simple trading strategy. Two novel methods are presented to reduce the risk of the trading simulations. Adjustment of the sigmoid class threshold and re-labelling headlines using multiple classes form the basis of these methods. A combination of these approaches is found to be more than double the Average Trade Profit achieved during baseline simulations.


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